SlideShare ist ein Scribd-Unternehmen logo
1 von 32
Downloaden Sie, um offline zu lesen
A Cognitive Heuristic model for Local
                            Community Recognition
                                                                   A. Guazzini*
                                                     Department of Psychology, University of Florence
                                                  *: CSDC, Centre for the study of Complex Dynamics,
                                                              University of Florence, Italy




    Contacts: andrea.guazzini@complexworld.net
              emanuele.massaro@complexworld.net
              franco.bagnoli@complexworld.net                                                           Webpage: http://www.complexworld.net/




Friday, June 8, 2012
A Cognitive Heuristic model of Local Community Recognition




   Summary:




      • The “ambiguous” concept of Community: just some Human examples
      • The Cognitive Skills that make us smart and effective community detectors
      • The Human Cognitive Heuristics: an operative definition
      • A new operative framework for the modeling of Human Cognitive Heuristics:The
        tri-partite model
      • The challenge
        • A minimal description of a cognitive inspired community recognizer
        • Numerical simulations: the recipe
        • Results
      • A step forward
      • Some Open Problems ....

                                           AWASS 2012
                                      Edinburg 10th-16th June


Friday, June 8, 2012
A Cognitive Heuristic model of Local Community Recognition




   The “ambiguous” concept of Community: just some Human example
  The concept of Human Community has been definitely
  proved to be too wide and multidimensional to be easily
          bound into a strict operative definition.




                                                              AWASS 2012
                                                         Edinburg 10th-16th June

Friday, June 8, 2012
A Cognitive Heuristic model of Local Community Recognition




   The “ambiguous” concept of Community: just some Human example




  The concept of Community appears
      as Culture dependent and
      determined by many socio
         demographic factors

                                                  AWASS 2012
                                             Edinburg 10th-16th June

Friday, June 8, 2012
A Cognitive Heuristic model of Local Community Recognition




   The “ambiguous” concept of Community: the Clustering Spectrum
        N°
  of Communities
    (K Individuals)

                                                                                  A better description for the Human communities
       ∼K
       =
         2                                                                          structure could be obtained considering the
                                                                                                Clustering Spectrum

      ∼ K
      = 1
        10


      ∼ K
      = 4
        10
                           Each Human Social Network can be
                             described in terms of density of
        ∼ K                interactions among its members, so
        = 8
          10                designing a hierarchy of structures.

            1
                       1                                 Normalized Weight Among Subjects (i.e. probability of interaction)    0


                                                          AWASS 2012
                                                     Edinburg 10th-16th June

Friday, June 8, 2012
A Cognitive Heuristic model of Local Community Recognition




   The Human Social Skills: the perfect community recognizer


  Humans have evolved their cognitive systems immersed
       into an “Highly Social Environment”, developing
    “Adapted” and sometimes Dedicated Neural Circuits
  for facing with the Social Problems ... at least within the
          Typical Sizes of the Human Communities.

                       Humans are:                                         15                                   5
    effective Community Recognizer: usually they are very
    “confident” about the communities they belong to and
      very “confident” about the peculiarities that define                       Dunbar Theory                     15
      and distinguish such communities. (Categorization)                       Evolution has produced a
                                                                            cognitive hierarchy of ecological
                                                                               (typical) social structures.
     effective Community Detectors: once trained cognition                  Such structures (Circles) can be
                                                                             defined in terms of Emotional
                                                                                                                 50
      appears as able to reveal an existing/known object                     Closeness among its members
     (community) in an effective way, e.g. starting from few                  and revealed analyzing the
          elements and consuming few time/resources                              frequencies of contact.         150

                                                     AWASS 2012
                                                Edinburg 10th-16th June

Friday, June 8, 2012
A Cognitive Heuristic model of Local Community Recognition




A new operative framework for the modeling of Human Cognitive Heuristics:
                          The tri-partite model

                                                                                                                     Reaction time

                               Module I                                                                                        Flexibility
                            Unconscious knowledge
                       perceptive and attentive processes
                                                                                                                                          Cognitive costs
                              Relevance Heuristic




                                                                         Module II
                                                                             Reasoning
                                                                           Goal Heuristic
   External                                                             Recognition Heuristic
                                                                           Solve Heuristic
     Data

                                                                                                                   Module III
                                                                                                                        Learning
                               Behavior
                                                                                                                   Evaluation Heuristic




                                                                The minimal structure of a Self
                                                                  Awareness cognitive agent

                                                                   AWASS 2012
                                                              Edinburg 10th-16th June

Friday, June 8, 2012
A Cognitive Heuristic model of Local Community Recognition




   The Human Cognitive Heuristics: an operative definition

   Using the theoretical tools of the Cognitive Neurosciences, Community Recognition/Definition and Community
     Detection can be designed as the ability of the cognitive system to extract relevant information from the
         environment, creating Prototypes (Mental Schemes) of Perceptive/knowledge Information Pattern

                                                     Prototype of Cognitive Heuristics

World         Perception Gate            Standard Neural
                                                                        Cognitive Prototype                                                     Reasoning
                                         Network Module                 (Mental Scheme-A)
   I1                     P1
                                              w1,1
                                                                                   A1                   Relevance/Coherence
                                                                                                                                          Conscious Processing
                                                                                                             Assessment
   I2                     P2                  w.,2                                 A2                                                    K1
                                                                                                       w2,1
    .       Neuro          .                                                         .                                                   K2
    .       Biology                                                                                    w2,n(K)
                           .                  wn(i),2                                .                                                    .
              of                                                                                       wn(a),2
    .      Encoding        .                 w.,n(a)                                 .                                                  Kn(K)
    .                    Pn(i)                                                    An(a)
                                            wn(i),n(a)
    .
    .                     k1                wn(k),n(a)
                                                                                                           The Mental Scheme are
    .                     k2                                                                             activated by the inputs and
                           .                                                                            changes the representation of
   IN                    Kn(k)                                                                                the environment


                  Bounded Knowledge                                   AWASS 2012                                           Bounded Knowledge
                   that integrates the                           Edinburg 10th-16th June                                    that represents the
                          Input                                                                                                    Input
Friday, June 8, 2012
A Cognitive Heuristic model of Local Community Recognition




      “A Cognitive inspired Community Recognition Algorithm”

    Considering an unknown dynamics network of relations, can be designed a Cognitive Agent that throughout
    the “ecological interactions” with its neighbors, autonomously develops a representation/map of the existing
                          communities, or at least of its “position” along a given dimension?


                                                                                                     5

                                                                                                     15

                                                                                                     50

                                                                                                     150

   Such algorithm should be intrinsically local and hence an optimal “Scalable Community Detection Algorithm”

                                                    AWASS 2012
                                               Edinburg 10th-16th June

Friday, June 8, 2012
A Cognitive Heuristic model of Local Community Recognition




    The Simple Case
                                                !#$$%'%(
                       !#$%%'(#)*#)'+,-./0#1,#2003*-.4#$%.%25*6#
                       )22,$-*+'4#7-./#./%#2+*-5%#./%,-%8#1#(,9)9-'-852#
                       ,%)8*-*+6#2/),)2.%,-:%$#94#./%#1''7-*+#(,(%,5%8;
                       ),-93.%8=#

                       • !#9%#-*/%,%*.'4#2)'#
                        #

                       • !#9%#2/),)2.%,-:%$#94#)#93*$%$#,)5*)'-.4#?@%,%#
                        #
                       A%0,4B#

                       • !#9%#)9'%#.#0%,+%#9./#-*$--$3)'#)*$#2''%25%#
                        #
                       C*7'%$+%#-*#,$%,#.#8'%#./%#.)8CD####

                                                      AWASS 2012
                                                 Edinburg 10th-16th June

Friday, June 8, 2012
A Cognitive Heuristic model of Local Community Recognition




    The Simple Case
                                               #$%'(')*+*,'%
                                               !
                           !#$%'()*+,$-..#-/0$1$10($/,+*23($0(#*42/4$5#41$*%.4(4$-$/0-#-/1(#*6-2+$
                           7$10($*++(#$41#/1#($7$10($-1%*/$()(%(+14$8+'(49:$                  F::$

                           ;(%#$
                                                                                                                  5/
                           =  +?)(',($#(.#(4(+1-2+$8@+'('$;(%#$A(/1#9$
                                                                                                                             F::$
                                                                                                                  .
                           B(#*42/4$
                           =  +/'*+,$87+/2+9$
                            C
                           =  (-#+*+,$87+/2+9$
                            D                                                                               50
                           = +7(#(+/($87+/2+9$
                            E
                                                                                                            .           51

                                                          -                                                            .

                                                        ./                           ./
                                                        .0                           .0
                       !6789:                          .1                           .1
                                         BI$                            BH$
                                                        .2                           .2
                                                        .33                          .33                  BG$
                                                        .4                           .4
                             E+7(#(+/($B(#*42/4$              D(-#+*+,$B(#*42/4$           C+/'*+,$B(#*42/4$

                                                            AWASS 2012
                                                       Edinburg 10th-16th June

Friday, June 8, 2012
A Cognitive Heuristic model of Local Community Recognition




    The Simple Case

                                                     !#$%'()*
                       !#$%'#()$#*$+#,-.$#+/%0*#%#1-23#*$+#+3-$.23$4#

                       • 5,-6/$.7$#.8*-9$30#+'%*$#
                        #
                       • :$%3,8,7#+'%*$#;$)-30#%,%7$)$,=#
                        #
                       • ,1$3$,$#+'%*$#
                        #
                       • ?-7,8(9$#@8**-,%,$#A9%/2%(-,#B'%*$#
                        #

                       C'$#)-.$/#6$#+3-+-*$#.$+$,.#-,#'3$$#)%8,#+%3%)$$3*4#

                       • D4#*#'$#)%E8)2)#*8F$#-1#'$#,-.$G*#H,-6/$.7$#9$-3#;$)-30=#
                        #
                       • I4#*#%#.$%0#+%3%)$$3#6'8'#)8)8*#'$#$J$#-1#'$#K*-8%/#.8*%,$L#
                        #
                       • )4#*#%#/$%3,8,7#3%$#1%-3#6'8'#32/$*#'$#*+$$.#-1#/$%3,8,7###
                        #




                                                        AWASS 2012
                                                   Edinburg 10th-16th June

Friday, June 8, 2012
A Cognitive Heuristic model of Local Community Recognition




    The Simple Case


                       !#$%'()'*+,#-./)012+)
                   !#$%'()*+,-.#-(

                   /($+,(0,-1(233,$452.$(16*($%*(1*,2#1($78(916(1-(:0,-1-;(*'6$+,-(
                   9*'6.'(16*,(=+*#*(8(2(%*#28(2#1$,(:?;@(

                   AB(C(A$*#.D18(E21,4(
                   E@((C(E*5$,8(D*#1$,($,(-+B*#1((
                   F((C(/#$5'(G$97*%'*(D*#1$,($,(-+B*#1(/(
                   ?(C(H*#28(2#1$,(



                                         K i = (M  C) i. # $

                                                        AWASS 2012
                                                   Edinburg 10th-16th June

Friday, June 8, 2012
A Cognitive Heuristic model of Local Community Recognition




    The Simple Case                          !#$%%'()*#+(
                       !#$%%'()*$+,-+(.%+/$0(12(34#5#1562()*$+,-+7((

                       89(%-:;%'(%:=50'(4-6:$(+(-:;1%0(=69(69(;:$2(?-6:$(*+%'(#(
                       5#$%%'($#6(@#-6:$(.;7A(

                                               t +1                 t                 t
                                           M   i.     = M  m + K  (1 # m)
                                                                    i.                j

                       B:*%0%'(#%0(CD/#%0%'(E9#+(
                       89(1:*%00(;;:$2(+(;/5;%60(12(-:%+0$%'(:%52(69('$#6+6(F(
                       5;%6+(:@(69(;:$2(?-6:$G(H:55:=%'(69(34#5#1562(9*$+,-+(+(+9#/0(12(
                       69(%:$;#5I#,:%(:@(69(;:$2(?-6:$J(=9-9(D/#%0+(69('$#6+6(5;%6+(
                       #%0(-:;/$+++(69(:69$+G(
                        !
                       B:*%0%'(35':$69;A( (           (       (        (    34#5#1562()*$+,-+(.K:$;#5I#,:%7(
                       L#(1MN(+:$6.GJO0+-%0O7(
                                                                                                               1
                       M i,b(S M :length(b )) = 0                                         M i. = M i.     N

                                                                                                           #M      ij
                                                                                                           j =1

                                                           AWASS 2012
!                                                     Edinburg 10th-16th June

Friday, June 8, 2012
A Cognitive Heuristic model of Local Community Recognition




    The Simple Case
                                            !#$%$$'()*+$'
                       !#$%$$'($)%*+,+'-*+.*%$/'01'2$.%$+$34,5$$++'($)%*+,+6''

                       !#$%$$'.74+$'74+'4'/8)09$'%89$:';7$'#8%$%'*+'38'.%8/)$'4'*#$%$$'408)3'
                       37$'9849'+3%)3)%$'8#'37$*%'$3=8%?'37$'94@$%'*+'37$'$+,4,8'8#'37$'%$9*40*9*31'8#'
                       37$'*#$%$$'*3+$9#'01'8.),A'4'+8%3'8#')$%34*31'8#'37$'*#8%4,8'
                       -B8A*,5$'C*++84$6:'

                       ;7$'+*.9$'%)9$'#8%'37$'D%+3'34+'#8998='4'E;4$'37$'F$+3G'4..%847:'H47'8/$+'
                       0$98A'38'37$'+4$'9)+3$%'8#'*3+'A%$43$+3'$8%1'$9$$3:'

                                                     ,-./012'3/44,.5.62'
                       !'8%/$%'38'$+,43$'37$'%$9*40*9*31'8#'37$*%'8='8=9$/A$'8#'37$'$5*%8$3'
                       $47'8/$'8.)3$+'4'=$*A73$/'/*+%$.41'48A'37$*%'$8%1'5$38%'4/'
                       378+$'8*A'#%8'*3+'$*A708)%+?'4+'#8998=+I''
                                                                   N

                                                                  $M          ij   #K     i
                                                                                          j
                                                                   j =1
                                                    Si =
                                                                             N
                                                          AWASS 2012
                                                     Edinburg 10th-16th June

Friday, June 8, 2012
A Cognitive Heuristic model of Local Community Recognition




    The Simple Case                      !#$#%'()%*#%!$
                        !#$%$#'(#$)*#+$'$,(-$*./0$'//(12*.'314$15$'$6%($4#)1(78$#./1('(-$
                       9+'('9#(*:;$-$'$=#'39$=-..#(*9$'4;$?4@)*A+#;$#(%9#%($15$91449314B$



                                    ,$


                           +$                    .$
                                                                                                      0$

                                    -$
                                                                                     /$                    2$

                                                                                                      1$
                                                         +3$



                                           +,$                       4$

                                                         ++$




                                                       AWASS 2012
                                                  Edinburg 10th-16th June

Friday, June 8, 2012
A Cognitive Heuristic model of Local Community Recognition




    The Simple Case




                                    AWASS 2012
                               Edinburg 10th-16th June

Friday, June 8, 2012
A Cognitive Heuristic model of Local Community Recognition




    The Simple Case




                                    AWASS 2012
                               Edinburg 10th-16th June

Friday, June 8, 2012
A Cognitive Heuristic model of Local Community Recognition




    The Simple Case




                                    AWASS 2012
                               Edinburg 10th-16th June

Friday, June 8, 2012
A Cognitive Heuristic model of Local Community Recognition




    The Simple Case




                                    AWASS 2012
                               Edinburg 10th-16th June

Friday, June 8, 2012
A Cognitive Heuristic model of Local Community Recognition




    The Simple Case
                                             !#$%'#%('
                       • #!!$!%!!'!(!%)*+,!-.!/01.2!31!2453%)6!/373%.,.71!81.2!-4!90*5):;.!
                        !
                       .87)1:61!,0!.=/07.!.?6).5,4!,+.!5.,@07AB!

                       • C0!,3A.!)5,0!366085,!D14%%.,7)6E!F.)*+,.2!352!G453%)63!5.,@07A1B!
                        !

                       • C0!%3A.!,+.!3*07),+%!1633-.!,+708*+!3//70/7)3,.!.87)1:61!
                        !
                       ,73,.*).1!-31.2!05!90*5):;.!GH1105356.!!!




                                                        AWASS 2012
                                                   Edinburg 10th-16th June

Friday, June 8, 2012
A Cognitive Heuristic model of Local Community Recognition




    A more Complex Case
                                      Fundamental
                                      Developments

       - Heterogeneous and dynamics parameters “m” and “alpha”.

       - Introduction of a Typical Time Scales (e.g. Circadian Rhythm) in
       correspondance of which the State Vector is reset.

       - Introduction of a Bounded Long Term Knowledge Vector




                                          AWASS 2012
                                     Edinburg 10th-16th June

Friday, June 8, 2012
A Cognitive Heuristic model of Local Community Recognition




    A more Complex Case
                                                             The Agent
                                             Random Memory                           Random Learning
                                                Parameter                               Parameter

      Short Term (Unconscious)
       “Bounded” Knowledge
                                           mi ∈ (0, 1)                          αi ∈ (1, ∞)                                Long Term (Conscious)
                                                                                                                           “Bounded” Knowledge

                   S1                                                                                                  K1,1 K1,2 ... K1,n(s)
                   S2                                                                                                  K2,1 . . . . . .
                       .                                                                                               .
                       .                                                                                               .
                       .                                                                                               .
                  Sn(S)                                                                                                Kn(K),1   .   .   Kn(K),n(s)
     State Bounded Vector Si(t)                                                                                       Knowledge Bounded Vector Ki(t)
    where n(s) is a finite constant                                                                                    where n(K) is a finite constant




                                     N Agent Estimated Entropy                Agent Cognitive Dissonance
                                                                                                             N
                                                                                                             
                           Ei =
                            t
                                         Sij log(Sij )
                                          t             t
                                                                                              Di,j =
                                                                                               t                     t      t
                                                                                                                   |Si,k − Sj,k |
                                     j=1                                                                     k=1

                                                             AWASS 2012
                                                        Edinburg 10th-16th June

Friday, June 8, 2012
A Cognitive Heuristic model of Local Community Recognition




    A more Complex Case

                                                                           The Environment

                                 Connectivity Matrix                                                                                              Connectivity Matrix


          10
                                                                                       Relevant Features
                                                                                                                             10

          20
                                                                             N = 90                                          20

          30                                                                                                                 30

          40                                                                 Large Comm (BC)= 1 (90)                         40

          50
                                                                             Medium Comm (MC) = 5 (18)                       50

          60                                                                                                                 60

          70                                                                 Small Comm (SC) = 10 (9)                        70

          80                                                                                                                 80

          90
                                                                             P(Lij)=PA with PA(BC) PA(MC) PA(SC)
                                                                                                                             90
                10     20   30      40       50        60   70   80   90                                                           10   20   30      40       50        60   70   80   90


                        Unweighted Network
                         (Adjacency Matrix)                                                                                                   Three different
                                                                                                                                              “Typical Sizes”




                                                                                   AWASS 2012
                                                                              Edinburg 10th-16th June

Friday, June 8, 2012
A Cognitive Heuristic model of Local Community Recognition




    A more Complex Case
                                                    The Recipe

              1- Discovery Phase
              Information Spreading/Gathering phase and State Vector (Unconscious Knowledge) Updating

              2- Cognitive Dissonance Phase
              Evaluation of Ego-side Information Entropy and Cognitive Dissonance (with neighbors)

              3- Reasoning Phase
              Evolution/Modification of the parameters whenever the discovery phase is “mute”

              4- Inference Phase
              Synchronized Reset of all the State Vector and Extrapolation of the first K relevant
              “approximation” of the network (state vectors), by the exploitation of the Ego Entropy.




                                                       AWASS 2012
                                                  Edinburg 10th-16th June

Friday, June 8, 2012
A Cognitive Heuristic model of Local Community Recognition




    A more Complex Case
                                                                 The Recipe
          1- Discovery Phase
          Information Spreading/Gathering phase and State Vector (Unconscious Knowledge) Updating

                                  Gathering SubPhase                                                            Learning SubPhase



                                                                                                                         t αt
                                                                                                                      (Qi,j ) i
                                                                                             t+1
                                                                                            Si,j           =        k(i) t αt
                                                                                                                     k=1 (Qi,k ) i
                                                         k(i)
                                                         
                       Qt = mt Si + (1 − mt )
                        i    i
                                t
                                          i
                                                                 t
                                                                Sk
                                                         k=1                                     Expansion of biggest component and reduction of smallest
                                                                                                 component by renormalization.


                         Where S is the state vector, k(i) is the
                       number of neighbors of the agent i, and mti
                           the memory of agent i at time t



                                                                    AWASS 2012
                                                               Edinburg 10th-16th June

Friday, June 8, 2012
A Cognitive Heuristic model of Local Community Recognition




    A more Complex Case
                                                        The Recipe
            2- Cognitive Dissonance Phase
            Evaluation of Ego-side Information Entropy and Cognitive Dissonance (with neighbors)


                                N Agent Estimated Entropy               Agent Cognitive Dissonance
                                                                                                      N
                                                                                                      
                        t
                       Ei   =       Sij log(Sij )
                                     t             t
                                                                                        Di,j =
                                                                                         t                    t      t
                                                                                                            |Si,k − Sj,k |
                                j=1                                                                   k=1




                                                           AWASS 2012
                                                      Edinburg 10th-16th June

Friday, June 8, 2012
A Cognitive Heuristic model of Local Community Recognition




    A more Complex Case
                                                              The Recipe
    3- Reasoning Phase
    Evolution/Modification of the parameters whenever the discovery phase is “mute” and detection of the
    change of sign in the second derivative of the entropy (Eti)

                                        IF                                                                     Just a “stupid/smart” rule
                         k(i)                        k(i)                                       ds=0.1;
      T
                                 t−1                         t
                             k=1 Di,k
                                                                                Then
                                                        k=1 Di,k                                  m(1,i)=m(1,i)*abs((randn*ds)+1);
             |(Ei +
                t−1
                                        )| − |(Ei +
                                                t
                                                                 )|                             if m(1,i)1, m(1,i)=1; end;
      t=t∗
                              k(i)                       k(i)
                                                                                                  if m(1,i)0, m(1,i)=0.01; end;
                       FOR     T − t∗  ∆t∗                                                       alpha(1,i) = 1.5*abs((randn*ds)+1);
                                                                                                  alpha(1,alpha(1,i)1)=1;




                                                                                     When the sign of the second derivative of the Agent
                                                                                  Entropy changes, the node temporary registers respectively:
                                                                                                 - The state Vector
                                                                                   - The value of the first derivative of Entropy
                                                                                        - The absolute Value of the Entropy
                                                                                            - The Cognitive Dissonance

                                 Time
                                                               AWASS 2012
                                                          Edinburg 10th-16th June

Friday, June 8, 2012
A Cognitive Heuristic model of Local Community Recognition




    A more Complex Case
                                                 The Recipe
    4- Inference Phase
    Synchronized Reset of all the State Vectors and Extrapolation of the firsts K relevant “approximation” of the
    network (state vectors), by the exploitation of the Ego Entropy.


                                                                                                     Sample coming from a
                                                                                                    “typical” discovery period
                                                                                                       (in humans the day)




Knowledge                                                                                                               Time




                                                    Bounded Rationality
                                                    AWASS 2012
                                               Edinburg 10th-16th June

Friday, June 8, 2012
A Cognitive Heuristic model of Local Community Recognition




    A more Complex Case
                              Preliminary Results




                                       AWASS 2012
                                  Edinburg 10th-16th June

Friday, June 8, 2012
A Cognitive Heuristic model of Local Community Recognition




    A more Complex Case                                                                Subject i (i=3) Long
                                  Preliminary Results                                    Term bounded
                                                                                            Memory




                                       AWASS 2012
                                  Edinburg 10th-16th June

Friday, June 8, 2012
A Cognitive Heuristic model of Local Community Recognition




   A step forward: Some open problems



    - Scalability of the algorithm with the System Size (N)

    - Validation of the Dunbar Theory about the existence of typical sizes
    of the human communities, due to their cognitive limits (i.e. Bounded
    Rationality) and the environmental constraints (i.e. Network Topology)

    - Multidimensional (i.e. more ecological) State Vector

    - Rewiring, Pruning and human heuristics for the Network
    Management.

                                                 AWASS 2012
                                            Edinburg 10th-16th June

Friday, June 8, 2012

Weitere ähnliche Inhalte

Was ist angesagt?

Alex Bennet KMME 2013
Alex Bennet KMME 2013Alex Bennet KMME 2013
Alex Bennet KMME 2013KMMiddleEast
 
Design Scripts: Designing (inter)action with intent
Design Scripts: Designing (inter)action with intent Design Scripts: Designing (inter)action with intent
Design Scripts: Designing (inter)action with intent Bas Leurs
 
Paul Cisek Model - No "Decision" "Decision-Making"
Paul Cisek Model - No "Decision" "Decision-Making"Paul Cisek Model - No "Decision" "Decision-Making"
Paul Cisek Model - No "Decision" "Decision-Making"BrainMoleculeMarketing
 
How to become an effective knowledge manager
How to become an effective knowledge managerHow to become an effective knowledge manager
How to become an effective knowledge managerAberdeen CES
 
Advisoryboard2
Advisoryboard2Advisoryboard2
Advisoryboard2garagenoda
 
Conference_20130305_Johan Peter Paludan
Conference_20130305_Johan Peter PaludanConference_20130305_Johan Peter Paludan
Conference_20130305_Johan Peter PaludanNordic Innovation
 
Social Intelligence & Leadership Presentation
Social Intelligence & Leadership PresentationSocial Intelligence & Leadership Presentation
Social Intelligence & Leadership PresentationKeith Miller
 
Artificial intelligence priti sajja spuniversity
Artificial intelligence priti sajja spuniversityArtificial intelligence priti sajja spuniversity
Artificial intelligence priti sajja spuniversityPriti Srinivas Sajja
 
Knowledge Based Systems -Artificial Intelligence by Priti Srinivas Sajja S P...
Knowledge Based Systems -Artificial Intelligence  by Priti Srinivas Sajja S P...Knowledge Based Systems -Artificial Intelligence  by Priti Srinivas Sajja S P...
Knowledge Based Systems -Artificial Intelligence by Priti Srinivas Sajja S P...Priti Srinivas Sajja
 
Designing Kansei Experience For Interaction
Designing Kansei Experience For InteractionDesigning Kansei Experience For Interaction
Designing Kansei Experience For InteractionTungjentsai 蔡敦仁
 
Critical Design Mid-Share - Ch1 of Dunne A.-Hertzian Tales-Electronic Product...
Critical Design Mid-Share - Ch1 of Dunne A.-Hertzian Tales-Electronic Product...Critical Design Mid-Share - Ch1 of Dunne A.-Hertzian Tales-Electronic Product...
Critical Design Mid-Share - Ch1 of Dunne A.-Hertzian Tales-Electronic Product...skyjo3
 
Measuring users' experience - or, the memory of them?
Measuring users' experience - or, the memory of them?Measuring users' experience - or, the memory of them?
Measuring users' experience - or, the memory of them?Evan Karapanos
 
Experience based Personal Multimedia Content Management System
Experience based Personal Multimedia Content Management SystemExperience based Personal Multimedia Content Management System
Experience based Personal Multimedia Content Management SystemAdrian Hornsby
 

Was ist angesagt? (20)

Alex Bennet KMME 2013
Alex Bennet KMME 2013Alex Bennet KMME 2013
Alex Bennet KMME 2013
 
GEM Premise and Concept Slides
GEM Premise and Concept SlidesGEM Premise and Concept Slides
GEM Premise and Concept Slides
 
Design Scripts: Designing (inter)action with intent
Design Scripts: Designing (inter)action with intent Design Scripts: Designing (inter)action with intent
Design Scripts: Designing (inter)action with intent
 
Cgjinahurry2
Cgjinahurry2Cgjinahurry2
Cgjinahurry2
 
Paul Cisek Model - No "Decision" "Decision-Making"
Paul Cisek Model - No "Decision" "Decision-Making"Paul Cisek Model - No "Decision" "Decision-Making"
Paul Cisek Model - No "Decision" "Decision-Making"
 
How to become an effective knowledge manager
How to become an effective knowledge managerHow to become an effective knowledge manager
How to become an effective knowledge manager
 
Advisoryboard2
Advisoryboard2Advisoryboard2
Advisoryboard2
 
Conference_20130305_Johan Peter Paludan
Conference_20130305_Johan Peter PaludanConference_20130305_Johan Peter Paludan
Conference_20130305_Johan Peter Paludan
 
Social Intelligence & Leadership Presentation
Social Intelligence & Leadership PresentationSocial Intelligence & Leadership Presentation
Social Intelligence & Leadership Presentation
 
Intelligent web applications
Intelligent web applicationsIntelligent web applications
Intelligent web applications
 
Artificial intelligence priti sajja spuniversity
Artificial intelligence priti sajja spuniversityArtificial intelligence priti sajja spuniversity
Artificial intelligence priti sajja spuniversity
 
Knowledge Based Systems -Artificial Intelligence by Priti Srinivas Sajja S P...
Knowledge Based Systems -Artificial Intelligence  by Priti Srinivas Sajja S P...Knowledge Based Systems -Artificial Intelligence  by Priti Srinivas Sajja S P...
Knowledge Based Systems -Artificial Intelligence by Priti Srinivas Sajja S P...
 
Designing Kansei Experience For Interaction
Designing Kansei Experience For InteractionDesigning Kansei Experience For Interaction
Designing Kansei Experience For Interaction
 
Critical Design Mid-Share - Ch1 of Dunne A.-Hertzian Tales-Electronic Product...
Critical Design Mid-Share - Ch1 of Dunne A.-Hertzian Tales-Electronic Product...Critical Design Mid-Share - Ch1 of Dunne A.-Hertzian Tales-Electronic Product...
Critical Design Mid-Share - Ch1 of Dunne A.-Hertzian Tales-Electronic Product...
 
Measuring users' experience - or, the memory of them?
Measuring users' experience - or, the memory of them?Measuring users' experience - or, the memory of them?
Measuring users' experience - or, the memory of them?
 
Pheade 2011
Pheade 2011Pheade 2011
Pheade 2011
 
Jagriti Kumar
Jagriti KumarJagriti Kumar
Jagriti Kumar
 
Experience based Personal Multimedia Content Management System
Experience based Personal Multimedia Content Management SystemExperience based Personal Multimedia Content Management System
Experience based Personal Multimedia Content Management System
 
Goutham2
Goutham2Goutham2
Goutham2
 
Can We Afford CSCL?
Can We Afford CSCL?Can We Afford CSCL?
Can We Afford CSCL?
 

Ähnlich wie A Cognitive Heuristic model for Local Community Recognition

Recognition introduction-dec-2010
Recognition introduction-dec-2010Recognition introduction-dec-2010
Recognition introduction-dec-2010awarenessproject
 
Education, technologies, cognition: triangulations possibles
Education, technologies, cognition: triangulations possiblesEducation, technologies, cognition: triangulations possibles
Education, technologies, cognition: triangulations possibleselena.pasquinelli
 
Augmenting Compassion Using Intimate Digital Media to Parallel Traditional D...
Augmenting Compassion Using Intimate Digital Media  to Parallel Traditional D...Augmenting Compassion Using Intimate Digital Media  to Parallel Traditional D...
Augmenting Compassion Using Intimate Digital Media to Parallel Traditional D...Christine Rosakranse
 
Personal Informatics Workshop at CHI 2010 (Poster)
Personal Informatics Workshop at CHI 2010 (Poster)Personal Informatics Workshop at CHI 2010 (Poster)
Personal Informatics Workshop at CHI 2010 (Poster)Ian Li
 
1 three partitioned-model_unifi_cnr
1 three partitioned-model_unifi_cnr1 three partitioned-model_unifi_cnr
1 three partitioned-model_unifi_cnrAle Cignetti
 
EXPERIMEDIA Facility Overview
EXPERIMEDIA Facility OverviewEXPERIMEDIA Facility Overview
EXPERIMEDIA Facility Overviewexperimedia
 
Distributed cognition
Distributed cognitionDistributed cognition
Distributed cognitionHongbo Zhang
 
Collaboration in virtual communities: a neuroscience approach
Collaboration in virtual communities: a neuroscience approachCollaboration in virtual communities: a neuroscience approach
Collaboration in virtual communities: a neuroscience approachThierry Nabeth
 
Hybrid worlds nano_biotech_art_impulsionsdi
Hybrid worlds nano_biotech_art_impulsionsdiHybrid worlds nano_biotech_art_impulsionsdi
Hybrid worlds nano_biotech_art_impulsionsdiVictoria Vesna
 
Luke Naismith - Workshop - KM Middle East 2011
Luke Naismith - Workshop -  KM Middle East 2011Luke Naismith - Workshop -  KM Middle East 2011
Luke Naismith - Workshop - KM Middle East 2011KMMiddleEast
 
2009 | IASDR 2009 conference discussion transcript
2009 | IASDR 2009 conference discussion transcript2009 | IASDR 2009 conference discussion transcript
2009 | IASDR 2009 conference discussion transcriptfrancesca // urijoe
 
The Postmodern Reality: Connecting in a Deconstructed Word
The Postmodern Reality: Connecting in a Deconstructed WordThe Postmodern Reality: Connecting in a Deconstructed Word
The Postmodern Reality: Connecting in a Deconstructed WordLaura Porto Stockwell
 
Laura Porto Stockwell, POP: The Post Modern Reality: Connecting in a Deconstr...
Laura Porto Stockwell, POP: The Post Modern Reality: Connecting in a Deconstr...Laura Porto Stockwell, POP: The Post Modern Reality: Connecting in a Deconstr...
Laura Porto Stockwell, POP: The Post Modern Reality: Connecting in a Deconstr...Seattle Interactive Conference
 
Mundane Rationality as a basis for modelling and understanding behaviour wit...
Mundane Rationality as a basis for modelling and understanding behaviour wit...Mundane Rationality as a basis for modelling and understanding behaviour wit...
Mundane Rationality as a basis for modelling and understanding behaviour wit...Bruce Edmonds
 

Ähnlich wie A Cognitive Heuristic model for Local Community Recognition (20)

Recognition introduction-dec-2010
Recognition introduction-dec-2010Recognition introduction-dec-2010
Recognition introduction-dec-2010
 
Education, technologies, cognition: triangulations possibles
Education, technologies, cognition: triangulations possiblesEducation, technologies, cognition: triangulations possibles
Education, technologies, cognition: triangulations possibles
 
Augmenting Compassion Using Intimate Digital Media to Parallel Traditional D...
Augmenting Compassion Using Intimate Digital Media  to Parallel Traditional D...Augmenting Compassion Using Intimate Digital Media  to Parallel Traditional D...
Augmenting Compassion Using Intimate Digital Media to Parallel Traditional D...
 
Vass2012 fisher
Vass2012 fisherVass2012 fisher
Vass2012 fisher
 
Personal Informatics Workshop at CHI 2010 (Poster)
Personal Informatics Workshop at CHI 2010 (Poster)Personal Informatics Workshop at CHI 2010 (Poster)
Personal Informatics Workshop at CHI 2010 (Poster)
 
M.A.D. World
M.A.D. WorldM.A.D. World
M.A.D. World
 
1 three partitioned-model_unifi_cnr
1 three partitioned-model_unifi_cnr1 three partitioned-model_unifi_cnr
1 three partitioned-model_unifi_cnr
 
EXPERIMEDIA Facility Overview
EXPERIMEDIA Facility OverviewEXPERIMEDIA Facility Overview
EXPERIMEDIA Facility Overview
 
Distributed cognition
Distributed cognitionDistributed cognition
Distributed cognition
 
Collaboration in virtual communities: a neuroscience approach
Collaboration in virtual communities: a neuroscience approachCollaboration in virtual communities: a neuroscience approach
Collaboration in virtual communities: a neuroscience approach
 
Recognition at end of Year 1
Recognition at end of Year 1Recognition at end of Year 1
Recognition at end of Year 1
 
Hybrid worlds nano_biotech_art_impulsionsdi
Hybrid worlds nano_biotech_art_impulsionsdiHybrid worlds nano_biotech_art_impulsionsdi
Hybrid worlds nano_biotech_art_impulsionsdi
 
Luke Naismith - Workshop - KM Middle East 2011
Luke Naismith - Workshop -  KM Middle East 2011Luke Naismith - Workshop -  KM Middle East 2011
Luke Naismith - Workshop - KM Middle East 2011
 
2009 | IASDR 2009 conference discussion transcript
2009 | IASDR 2009 conference discussion transcript2009 | IASDR 2009 conference discussion transcript
2009 | IASDR 2009 conference discussion transcript
 
SociologyExchange.co.uk Shared Resource
SociologyExchange.co.uk Shared ResourceSociologyExchange.co.uk Shared Resource
SociologyExchange.co.uk Shared Resource
 
The Postmodern Reality: Connecting in a Deconstructed Word
The Postmodern Reality: Connecting in a Deconstructed WordThe Postmodern Reality: Connecting in a Deconstructed Word
The Postmodern Reality: Connecting in a Deconstructed Word
 
Laura Porto Stockwell, POP: The Post Modern Reality: Connecting in a Deconstr...
Laura Porto Stockwell, POP: The Post Modern Reality: Connecting in a Deconstr...Laura Porto Stockwell, POP: The Post Modern Reality: Connecting in a Deconstr...
Laura Porto Stockwell, POP: The Post Modern Reality: Connecting in a Deconstr...
 
Mundane Rationality as a basis for modelling and understanding behaviour wit...
Mundane Rationality as a basis for modelling and understanding behaviour wit...Mundane Rationality as a basis for modelling and understanding behaviour wit...
Mundane Rationality as a basis for modelling and understanding behaviour wit...
 
Conceptual Map and Classification In Ensembles Of Autonomic Components: From ...
Conceptual Map and Classification In Ensembles Of Autonomic Components: From ...Conceptual Map and Classification In Ensembles Of Autonomic Components: From ...
Conceptual Map and Classification In Ensembles Of Autonomic Components: From ...
 
Communities, Orientation
Communities, OrientationCommunities, Orientation
Communities, Orientation
 

Mehr von FET AWARE project - Self Awareness in Autonomic Systems

Mehr von FET AWARE project - Self Awareness in Autonomic Systems (20)

Academic Course: 13 Applications of and Challenges in Self-Awareness
Academic Course: 13 Applications of and Challenges in Self-AwarenessAcademic Course: 13 Applications of and Challenges in Self-Awareness
Academic Course: 13 Applications of and Challenges in Self-Awareness
 
Academic Course: 12 Safety and Ethics
Academic Course: 12 Safety and EthicsAcademic Course: 12 Safety and Ethics
Academic Course: 12 Safety and Ethics
 
Academic Course: 08 Pattern-based design of autonomic systems
Academic Course: 08 Pattern-based design of autonomic systemsAcademic Course: 08 Pattern-based design of autonomic systems
Academic Course: 08 Pattern-based design of autonomic systems
 
Academic Course: 07 Introduction to the Formal Engineering of Autonomic Systems
Academic Course: 07 Introduction to the Formal Engineering of Autonomic SystemsAcademic Course: 07 Introduction to the Formal Engineering of Autonomic Systems
Academic Course: 07 Introduction to the Formal Engineering of Autonomic Systems
 
Academic Course: 06 Morphogenetic Engineering
Academic Course: 06 Morphogenetic EngineeringAcademic Course: 06 Morphogenetic Engineering
Academic Course: 06 Morphogenetic Engineering
 
Academic Course: 04 Introduction to complex systems and agent based modeling
Academic Course: 04 Introduction to complex systems and agent based modelingAcademic Course: 04 Introduction to complex systems and agent based modeling
Academic Course: 04 Introduction to complex systems and agent based modeling
 
Academic Course: 03 Autonomic Multi-Agent Systems
Academic Course: 03 Autonomic Multi-Agent SystemsAcademic Course: 03 Autonomic Multi-Agent Systems
Academic Course: 03 Autonomic Multi-Agent Systems
 
Academic Course: 02 Self-organization and emergence in networked systems
Academic Course: 02 Self-organization and emergence in networked systemsAcademic Course: 02 Self-organization and emergence in networked systems
Academic Course: 02 Self-organization and emergence in networked systems
 
Academic Course: 01 Self-awarenesss and Computational Self-awareness
Academic Course: 01 Self-awarenesss and Computational Self-awarenessAcademic Course: 01 Self-awarenesss and Computational Self-awareness
Academic Course: 01 Self-awarenesss and Computational Self-awareness
 
Awareness: Layman Seminar Slides
Awareness: Layman Seminar SlidesAwareness: Layman Seminar Slides
Awareness: Layman Seminar Slides
 
Industry Training: 04 Awareness Applications
Industry Training: 04 Awareness ApplicationsIndustry Training: 04 Awareness Applications
Industry Training: 04 Awareness Applications
 
Industry Training: 03 Awareness Simulation
Industry Training: 03 Awareness SimulationIndustry Training: 03 Awareness Simulation
Industry Training: 03 Awareness Simulation
 
Industry Training: 02 Awareness Properties
Industry Training: 02 Awareness PropertiesIndustry Training: 02 Awareness Properties
Industry Training: 02 Awareness Properties
 
Industry Training: 01 Awareness Overview
Industry Training: 01 Awareness OverviewIndustry Training: 01 Awareness Overview
Industry Training: 01 Awareness Overview
 
Robot Swarms as Ensembles of Cooperating Components - Matthias Holzl
Robot Swarms as Ensembles of Cooperating Components - Matthias HolzlRobot Swarms as Ensembles of Cooperating Components - Matthias Holzl
Robot Swarms as Ensembles of Cooperating Components - Matthias Holzl
 
Towards Systematically Engineering Ensembles - Martin Wirsing
Towards Systematically Engineering Ensembles - Martin WirsingTowards Systematically Engineering Ensembles - Martin Wirsing
Towards Systematically Engineering Ensembles - Martin Wirsing
 
Capturing the Immune System: From the wet-­lab to the robot, building better ...
Capturing the Immune System: From the wet-­lab to the robot, building better ...Capturing the Immune System: From the wet-­lab to the robot, building better ...
Capturing the Immune System: From the wet-­lab to the robot, building better ...
 
Underwater search and rescue in swarm robotics - Mark Read
Underwater search and rescue in swarm robotics - Mark Read Underwater search and rescue in swarm robotics - Mark Read
Underwater search and rescue in swarm robotics - Mark Read
 
Computational Self-awareness in Smart-Camera Networks - Lukas Esterle
Computational Self-awareness in Smart-Camera Networks - Lukas EsterleComputational Self-awareness in Smart-Camera Networks - Lukas Esterle
Computational Self-awareness in Smart-Camera Networks - Lukas Esterle
 
Why Robots may need to be self-­‐aware, before we can really trust them - Ala...
Why Robots may need to be self-­‐aware, before we can really trust them - Ala...Why Robots may need to be self-­‐aware, before we can really trust them - Ala...
Why Robots may need to be self-­‐aware, before we can really trust them - Ala...
 

Kürzlich hochgeladen

The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024Rafal Los
 
08448380779 Call Girls In Friends Colony Women Seeking Men
08448380779 Call Girls In Friends Colony Women Seeking Men08448380779 Call Girls In Friends Colony Women Seeking Men
08448380779 Call Girls In Friends Colony Women Seeking MenDelhi Call girls
 
08448380779 Call Girls In Greater Kailash - I Women Seeking Men
08448380779 Call Girls In Greater Kailash - I Women Seeking Men08448380779 Call Girls In Greater Kailash - I Women Seeking Men
08448380779 Call Girls In Greater Kailash - I Women Seeking MenDelhi Call girls
 
IAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI SolutionsIAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI SolutionsEnterprise Knowledge
 
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerHow to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerThousandEyes
 
Understanding the Laravel MVC Architecture
Understanding the Laravel MVC ArchitectureUnderstanding the Laravel MVC Architecture
Understanding the Laravel MVC ArchitecturePixlogix Infotech
 
Kotlin Multiplatform & Compose Multiplatform - Starter kit for pragmatics
Kotlin Multiplatform & Compose Multiplatform - Starter kit for pragmaticsKotlin Multiplatform & Compose Multiplatform - Starter kit for pragmatics
Kotlin Multiplatform & Compose Multiplatform - Starter kit for pragmaticscarlostorres15106
 
Install Stable Diffusion in windows machine
Install Stable Diffusion in windows machineInstall Stable Diffusion in windows machine
Install Stable Diffusion in windows machinePadma Pradeep
 
A Domino Admins Adventures (Engage 2024)
A Domino Admins Adventures (Engage 2024)A Domino Admins Adventures (Engage 2024)
A Domino Admins Adventures (Engage 2024)Gabriella Davis
 
Handwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed textsHandwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed textsMaria Levchenko
 
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking MenDelhi Call girls
 
Breaking the Kubernetes Kill Chain: Host Path Mount
Breaking the Kubernetes Kill Chain: Host Path MountBreaking the Kubernetes Kill Chain: Host Path Mount
Breaking the Kubernetes Kill Chain: Host Path MountPuma Security, LLC
 
Key Features Of Token Development (1).pptx
Key  Features Of Token  Development (1).pptxKey  Features Of Token  Development (1).pptx
Key Features Of Token Development (1).pptxLBM Solutions
 
WhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure service
WhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure serviceWhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure service
WhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure servicePooja Nehwal
 
AI as an Interface for Commercial Buildings
AI as an Interface for Commercial BuildingsAI as an Interface for Commercial Buildings
AI as an Interface for Commercial BuildingsMemoori
 
Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...
Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...
Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...Neo4j
 
Azure Monitor & Application Insight to monitor Infrastructure & Application
Azure Monitor & Application Insight to monitor Infrastructure & ApplicationAzure Monitor & Application Insight to monitor Infrastructure & Application
Azure Monitor & Application Insight to monitor Infrastructure & ApplicationAndikSusilo4
 
Swan(sea) Song – personal research during my six years at Swansea ... and bey...
Swan(sea) Song – personal research during my six years at Swansea ... and bey...Swan(sea) Song – personal research during my six years at Swansea ... and bey...
Swan(sea) Song – personal research during my six years at Swansea ... and bey...Alan Dix
 
08448380779 Call Girls In Civil Lines Women Seeking Men
08448380779 Call Girls In Civil Lines Women Seeking Men08448380779 Call Girls In Civil Lines Women Seeking Men
08448380779 Call Girls In Civil Lines Women Seeking MenDelhi Call girls
 
Benefits Of Flutter Compared To Other Frameworks
Benefits Of Flutter Compared To Other FrameworksBenefits Of Flutter Compared To Other Frameworks
Benefits Of Flutter Compared To Other FrameworksSoftradix Technologies
 

Kürzlich hochgeladen (20)

The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024
 
08448380779 Call Girls In Friends Colony Women Seeking Men
08448380779 Call Girls In Friends Colony Women Seeking Men08448380779 Call Girls In Friends Colony Women Seeking Men
08448380779 Call Girls In Friends Colony Women Seeking Men
 
08448380779 Call Girls In Greater Kailash - I Women Seeking Men
08448380779 Call Girls In Greater Kailash - I Women Seeking Men08448380779 Call Girls In Greater Kailash - I Women Seeking Men
08448380779 Call Girls In Greater Kailash - I Women Seeking Men
 
IAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI SolutionsIAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI Solutions
 
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerHow to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected Worker
 
Understanding the Laravel MVC Architecture
Understanding the Laravel MVC ArchitectureUnderstanding the Laravel MVC Architecture
Understanding the Laravel MVC Architecture
 
Kotlin Multiplatform & Compose Multiplatform - Starter kit for pragmatics
Kotlin Multiplatform & Compose Multiplatform - Starter kit for pragmaticsKotlin Multiplatform & Compose Multiplatform - Starter kit for pragmatics
Kotlin Multiplatform & Compose Multiplatform - Starter kit for pragmatics
 
Install Stable Diffusion in windows machine
Install Stable Diffusion in windows machineInstall Stable Diffusion in windows machine
Install Stable Diffusion in windows machine
 
A Domino Admins Adventures (Engage 2024)
A Domino Admins Adventures (Engage 2024)A Domino Admins Adventures (Engage 2024)
A Domino Admins Adventures (Engage 2024)
 
Handwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed textsHandwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed texts
 
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
 
Breaking the Kubernetes Kill Chain: Host Path Mount
Breaking the Kubernetes Kill Chain: Host Path MountBreaking the Kubernetes Kill Chain: Host Path Mount
Breaking the Kubernetes Kill Chain: Host Path Mount
 
Key Features Of Token Development (1).pptx
Key  Features Of Token  Development (1).pptxKey  Features Of Token  Development (1).pptx
Key Features Of Token Development (1).pptx
 
WhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure service
WhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure serviceWhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure service
WhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure service
 
AI as an Interface for Commercial Buildings
AI as an Interface for Commercial BuildingsAI as an Interface for Commercial Buildings
AI as an Interface for Commercial Buildings
 
Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...
Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...
Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...
 
Azure Monitor & Application Insight to monitor Infrastructure & Application
Azure Monitor & Application Insight to monitor Infrastructure & ApplicationAzure Monitor & Application Insight to monitor Infrastructure & Application
Azure Monitor & Application Insight to monitor Infrastructure & Application
 
Swan(sea) Song – personal research during my six years at Swansea ... and bey...
Swan(sea) Song – personal research during my six years at Swansea ... and bey...Swan(sea) Song – personal research during my six years at Swansea ... and bey...
Swan(sea) Song – personal research during my six years at Swansea ... and bey...
 
08448380779 Call Girls In Civil Lines Women Seeking Men
08448380779 Call Girls In Civil Lines Women Seeking Men08448380779 Call Girls In Civil Lines Women Seeking Men
08448380779 Call Girls In Civil Lines Women Seeking Men
 
Benefits Of Flutter Compared To Other Frameworks
Benefits Of Flutter Compared To Other FrameworksBenefits Of Flutter Compared To Other Frameworks
Benefits Of Flutter Compared To Other Frameworks
 

A Cognitive Heuristic model for Local Community Recognition

  • 1. A Cognitive Heuristic model for Local Community Recognition A. Guazzini* Department of Psychology, University of Florence *: CSDC, Centre for the study of Complex Dynamics, University of Florence, Italy Contacts: andrea.guazzini@complexworld.net emanuele.massaro@complexworld.net franco.bagnoli@complexworld.net Webpage: http://www.complexworld.net/ Friday, June 8, 2012
  • 2. A Cognitive Heuristic model of Local Community Recognition Summary: • The “ambiguous” concept of Community: just some Human examples • The Cognitive Skills that make us smart and effective community detectors • The Human Cognitive Heuristics: an operative definition • A new operative framework for the modeling of Human Cognitive Heuristics:The tri-partite model • The challenge • A minimal description of a cognitive inspired community recognizer • Numerical simulations: the recipe • Results • A step forward • Some Open Problems .... AWASS 2012 Edinburg 10th-16th June Friday, June 8, 2012
  • 3. A Cognitive Heuristic model of Local Community Recognition The “ambiguous” concept of Community: just some Human example The concept of Human Community has been definitely proved to be too wide and multidimensional to be easily bound into a strict operative definition. AWASS 2012 Edinburg 10th-16th June Friday, June 8, 2012
  • 4. A Cognitive Heuristic model of Local Community Recognition The “ambiguous” concept of Community: just some Human example The concept of Community appears as Culture dependent and determined by many socio demographic factors AWASS 2012 Edinburg 10th-16th June Friday, June 8, 2012
  • 5. A Cognitive Heuristic model of Local Community Recognition The “ambiguous” concept of Community: the Clustering Spectrum N° of Communities (K Individuals) A better description for the Human communities ∼K = 2 structure could be obtained considering the Clustering Spectrum ∼ K = 1 10 ∼ K = 4 10 Each Human Social Network can be described in terms of density of ∼ K interactions among its members, so = 8 10 designing a hierarchy of structures. 1 1 Normalized Weight Among Subjects (i.e. probability of interaction) 0 AWASS 2012 Edinburg 10th-16th June Friday, June 8, 2012
  • 6. A Cognitive Heuristic model of Local Community Recognition The Human Social Skills: the perfect community recognizer Humans have evolved their cognitive systems immersed into an “Highly Social Environment”, developing “Adapted” and sometimes Dedicated Neural Circuits for facing with the Social Problems ... at least within the Typical Sizes of the Human Communities. Humans are: 15 5 effective Community Recognizer: usually they are very “confident” about the communities they belong to and very “confident” about the peculiarities that define Dunbar Theory 15 and distinguish such communities. (Categorization) Evolution has produced a cognitive hierarchy of ecological (typical) social structures. effective Community Detectors: once trained cognition Such structures (Circles) can be defined in terms of Emotional 50 appears as able to reveal an existing/known object Closeness among its members (community) in an effective way, e.g. starting from few and revealed analyzing the elements and consuming few time/resources frequencies of contact. 150 AWASS 2012 Edinburg 10th-16th June Friday, June 8, 2012
  • 7. A Cognitive Heuristic model of Local Community Recognition A new operative framework for the modeling of Human Cognitive Heuristics: The tri-partite model Reaction time Module I Flexibility Unconscious knowledge perceptive and attentive processes Cognitive costs Relevance Heuristic Module II Reasoning Goal Heuristic External Recognition Heuristic Solve Heuristic Data Module III Learning Behavior Evaluation Heuristic The minimal structure of a Self Awareness cognitive agent AWASS 2012 Edinburg 10th-16th June Friday, June 8, 2012
  • 8. A Cognitive Heuristic model of Local Community Recognition The Human Cognitive Heuristics: an operative definition Using the theoretical tools of the Cognitive Neurosciences, Community Recognition/Definition and Community Detection can be designed as the ability of the cognitive system to extract relevant information from the environment, creating Prototypes (Mental Schemes) of Perceptive/knowledge Information Pattern Prototype of Cognitive Heuristics World Perception Gate Standard Neural Cognitive Prototype Reasoning Network Module (Mental Scheme-A) I1 P1 w1,1 A1 Relevance/Coherence Conscious Processing Assessment I2 P2 w.,2 A2 K1 w2,1 . Neuro . . K2 . Biology w2,n(K) . wn(i),2 . . of wn(a),2 . Encoding . w.,n(a) . Kn(K) . Pn(i) An(a) wn(i),n(a) . . k1 wn(k),n(a) The Mental Scheme are . k2 activated by the inputs and . changes the representation of IN Kn(k) the environment Bounded Knowledge AWASS 2012 Bounded Knowledge that integrates the Edinburg 10th-16th June that represents the Input Input Friday, June 8, 2012
  • 9. A Cognitive Heuristic model of Local Community Recognition “A Cognitive inspired Community Recognition Algorithm” Considering an unknown dynamics network of relations, can be designed a Cognitive Agent that throughout the “ecological interactions” with its neighbors, autonomously develops a representation/map of the existing communities, or at least of its “position” along a given dimension? 5 15 50 150 Such algorithm should be intrinsically local and hence an optimal “Scalable Community Detection Algorithm” AWASS 2012 Edinburg 10th-16th June Friday, June 8, 2012
  • 10. A Cognitive Heuristic model of Local Community Recognition The Simple Case !#$$%'%( !#$%%'(#)*#)'+,-./0#1,#2003*-.4#$%.%25*6# )22,$-*+'4#7-./#./%#2+*-5%#./%,-%8#1#(,9)9-'-852# ,%)8*-*+6#2/),)2.%,-:%$#94#./%#1''7-*+#(,(%,5%8; ),-93.%8=# • !#9%#-*/%,%*.'4#2)'# # • !#9%#2/),)2.%,-:%$#94#)#93*$%$#,)5*)'-.4#?@%,%# # A%0,4B# • !#9%#)9'%#.#0%,+%#9./#-*$--$3)'#)*$#2''%25%# # C*7'%$+%#-*#,$%,#.#8'%#./%#.)8CD#### AWASS 2012 Edinburg 10th-16th June Friday, June 8, 2012
  • 11. A Cognitive Heuristic model of Local Community Recognition The Simple Case #$%'(')*+*,'% ! !#$%'()*+,$-..#-/0$1$10($/,+*23($0(#*42/4$5#41$*%.4(4$-$/0-#-/1(#*6-2+$ 7$10($*++(#$41#/1#($7$10($-1%*/$()(%(+14$8+'(49:$ F::$ ;(%#$ 5/ =  +?)(',($#(.#(4(+1-2+$8@+'('$;(%#$A(/1#9$ F::$ . B(#*42/4$ =  +/'*+,$87+/2+9$ C =  (-#+*+,$87+/2+9$ D 50 = +7(#(+/($87+/2+9$ E . 51 - . ./ ./ .0 .0 !6789: .1 .1 BI$ BH$ .2 .2 .33 .33 BG$ .4 .4 E+7(#(+/($B(#*42/4$ D(-#+*+,$B(#*42/4$ C+/'*+,$B(#*42/4$ AWASS 2012 Edinburg 10th-16th June Friday, June 8, 2012
  • 12. A Cognitive Heuristic model of Local Community Recognition The Simple Case !#$%'()* !#$%'#()$#*$+#,-.$#+/%0*#%#1-23#*$+#+3-$.23$4# • 5,-6/$.7$#.8*-9$30#+'%*$# # • :$%3,8,7#+'%*$#;$)-30#%,%7$)$,=# # • ,1$3$,$#+'%*$# # • ?-7,8(9$#@8**-,%,$#A9%/2%(-,#B'%*$# # C'$#)-.$/#6$#+3-+-*$#.$+$,.#-,#'3$$#)%8,#+%3%)$$3*4# • D4#*#'$#)%E8)2)#*8F$#-1#'$#,-.$G*#H,-6/$.7$#9$-3#;$)-30=# # • I4#*#%#.$%0#+%3%)$$3#6'8'#)8)8*#'$#$J$#-1#'$#K*-8%/#.8*%,$L# # • )4#*#%#/$%3,8,7#3%$#1%-3#6'8'#32/$*#'$#*+$$.#-1#/$%3,8,7### # AWASS 2012 Edinburg 10th-16th June Friday, June 8, 2012
  • 13. A Cognitive Heuristic model of Local Community Recognition The Simple Case !#$%'()'*+,#-./)012+) !#$%'()*+,-.#-( /($+,(0,-1(233,$452.$(16*($%*(1*,2#1($78(916(1-(:0,-1-;(*'6$+,-( 9*'6.'(16*,(=+*#*(8(2(%*#28(2#1$,(:?;@( AB(C(A$*#.D18(E21,4( E@((C(E*5$,8(D*#1$,($,(-+B*#1(( F((C(/#$5'(G$97*%'*(D*#1$,($,(-+B*#1(/( ?(C(H*#28(2#1$,( K i = (M C) i. # $ AWASS 2012 Edinburg 10th-16th June Friday, June 8, 2012
  • 14. A Cognitive Heuristic model of Local Community Recognition The Simple Case !#$%%'()*#+( !#$%%'()*$+,-+(.%+/$0(12(34#5#1562()*$+,-+7(( 89(%-:;%'(%:=50'(4-6:$(+(-:;1%0(=69(69(;:$2(?-6:$(*+%'(#( 5#$%%'($#6(@#-6:$(.;7A( t +1 t t M i. = M m + K (1 # m) i. j B:*%0%'(#%0(CD/#%0%'(E9#+( 89(1:*%00(;;:$2(+(;/5;%60(12(-:%+0$%'(:%52(69('$#6+6(F( 5;%6+(:@(69(;:$2(?-6:$G(H:55:=%'(69(34#5#1562(9*$+,-+(+(+9#/0(12( 69(%:$;#5I#,:%(:@(69(;:$2(?-6:$J(=9-9(D/#%0+(69('$#6+6(5;%6+( #%0(-:;/$+++(69(:69$+G( ! B:*%0%'(35':$69;A( ( ( ( ( 34#5#1562()*$+,-+(.K:$;#5I#,:%7( L#(1MN(+:$6.GJO0+-%0O7( 1 M i,b(S M :length(b )) = 0 M i. = M i. N #M ij j =1 AWASS 2012 ! Edinburg 10th-16th June Friday, June 8, 2012
  • 15. A Cognitive Heuristic model of Local Community Recognition The Simple Case !#$%$$'()*+$' !#$%$$'($)%*+,+'-*+.*%$/'01'2$.%$+$34,5$$++'($)%*+,+6'' !#$%$$'.74+$'74+'4'/8)09$'%89$:';7$'#8%$%'*+'38'.%8/)$'4'*#$%$$'408)3' 37$'9849'+3%)3)%$'8#'37$*%'$3=8%?'37$'94@$%'*+'37$'$+,4,8'8#'37$'%$9*40*9*31'8#' 37$'*#$%$$'*3+$9#'01'8.),A'4'+8%3'8#')$%34*31'8#'37$'*#8%4,8' -B8A*,5$'C*++84$6:' ;7$'+*.9$'%)9$'#8%'37$'D%+3'34+'#8998='4'E;4$'37$'F$+3G'4..%847:'H47'8/$+' 0$98A'38'37$'+4$'9)+3$%'8#'*3+'A%$43$+3'$8%1'$9$$3:' ,-./012'3/44,.5.62' !'8%/$%'38'$+,43$'37$'%$9*40*9*31'8#'37$*%'8='8=9$/A$'8#'37$'$5*%8$3' $47'8/$'8.)3$+'4'=$*A73$/'/*+%$.41'48A'37$*%'$8%1'5$38%'4/' 378+$'8*A'#%8'*3+'$*A708)%+?'4+'#8998=+I'' N $M ij #K i j j =1 Si = N AWASS 2012 Edinburg 10th-16th June Friday, June 8, 2012
  • 16. A Cognitive Heuristic model of Local Community Recognition The Simple Case !#$#%'()%*#%!$ !#$%$#'(#$)*#+$'$,(-$*./0$'//(12*.'314$15$'$6%($4#)1(78$#./1('(-$ 9+'('9#(*:;$-$'$=#'39$=-..#(*9$'4;$?4@)*A+#;$#(%9#%($15$91449314B$ ,$ +$ .$ 0$ -$ /$ 2$ 1$ +3$ +,$ 4$ ++$ AWASS 2012 Edinburg 10th-16th June Friday, June 8, 2012
  • 17. A Cognitive Heuristic model of Local Community Recognition The Simple Case AWASS 2012 Edinburg 10th-16th June Friday, June 8, 2012
  • 18. A Cognitive Heuristic model of Local Community Recognition The Simple Case AWASS 2012 Edinburg 10th-16th June Friday, June 8, 2012
  • 19. A Cognitive Heuristic model of Local Community Recognition The Simple Case AWASS 2012 Edinburg 10th-16th June Friday, June 8, 2012
  • 20. A Cognitive Heuristic model of Local Community Recognition The Simple Case AWASS 2012 Edinburg 10th-16th June Friday, June 8, 2012
  • 21. A Cognitive Heuristic model of Local Community Recognition The Simple Case !#$%'#%(' • #!!$!%!!'!(!%)*+,!-.!/01.2!31!2453%)6!/373%.,.71!81.2!-4!90*5):;.! ! .87)1:61!,0!.=/07.!.?6).5,4!,+.!5.,@07AB! • C0!,3A.!)5,0!366085,!D14%%.,7)6E!F.)*+,.2!352!G453%)63!5.,@07A1B! ! • C0!%3A.!,+.!3*07),+%!1633-.!,+708*+!3//70/7)3,.!.87)1:61! ! ,73,.*).1!-31.2!05!90*5):;.!GH1105356.!!! AWASS 2012 Edinburg 10th-16th June Friday, June 8, 2012
  • 22. A Cognitive Heuristic model of Local Community Recognition A more Complex Case Fundamental Developments - Heterogeneous and dynamics parameters “m” and “alpha”. - Introduction of a Typical Time Scales (e.g. Circadian Rhythm) in correspondance of which the State Vector is reset. - Introduction of a Bounded Long Term Knowledge Vector AWASS 2012 Edinburg 10th-16th June Friday, June 8, 2012
  • 23. A Cognitive Heuristic model of Local Community Recognition A more Complex Case The Agent Random Memory Random Learning Parameter Parameter Short Term (Unconscious) “Bounded” Knowledge mi ∈ (0, 1) αi ∈ (1, ∞) Long Term (Conscious) “Bounded” Knowledge S1 K1,1 K1,2 ... K1,n(s) S2 K2,1 . . . . . . . . . . . . Sn(S) Kn(K),1 . . Kn(K),n(s) State Bounded Vector Si(t) Knowledge Bounded Vector Ki(t) where n(s) is a finite constant where n(K) is a finite constant N Agent Estimated Entropy Agent Cognitive Dissonance N Ei = t Sij log(Sij ) t t Di,j = t t t |Si,k − Sj,k | j=1 k=1 AWASS 2012 Edinburg 10th-16th June Friday, June 8, 2012
  • 24. A Cognitive Heuristic model of Local Community Recognition A more Complex Case The Environment Connectivity Matrix Connectivity Matrix 10 Relevant Features 10 20 N = 90 20 30 30 40 Large Comm (BC)= 1 (90) 40 50 Medium Comm (MC) = 5 (18) 50 60 60 70 Small Comm (SC) = 10 (9) 70 80 80 90 P(Lij)=PA with PA(BC) PA(MC) PA(SC) 90 10 20 30 40 50 60 70 80 90 10 20 30 40 50 60 70 80 90 Unweighted Network (Adjacency Matrix) Three different “Typical Sizes” AWASS 2012 Edinburg 10th-16th June Friday, June 8, 2012
  • 25. A Cognitive Heuristic model of Local Community Recognition A more Complex Case The Recipe 1- Discovery Phase Information Spreading/Gathering phase and State Vector (Unconscious Knowledge) Updating 2- Cognitive Dissonance Phase Evaluation of Ego-side Information Entropy and Cognitive Dissonance (with neighbors) 3- Reasoning Phase Evolution/Modification of the parameters whenever the discovery phase is “mute” 4- Inference Phase Synchronized Reset of all the State Vector and Extrapolation of the first K relevant “approximation” of the network (state vectors), by the exploitation of the Ego Entropy. AWASS 2012 Edinburg 10th-16th June Friday, June 8, 2012
  • 26. A Cognitive Heuristic model of Local Community Recognition A more Complex Case The Recipe 1- Discovery Phase Information Spreading/Gathering phase and State Vector (Unconscious Knowledge) Updating Gathering SubPhase Learning SubPhase t αt (Qi,j ) i t+1 Si,j = k(i) t αt k=1 (Qi,k ) i k(i) Qt = mt Si + (1 − mt ) i i t i t Sk k=1 Expansion of biggest component and reduction of smallest component by renormalization. Where S is the state vector, k(i) is the number of neighbors of the agent i, and mti the memory of agent i at time t AWASS 2012 Edinburg 10th-16th June Friday, June 8, 2012
  • 27. A Cognitive Heuristic model of Local Community Recognition A more Complex Case The Recipe 2- Cognitive Dissonance Phase Evaluation of Ego-side Information Entropy and Cognitive Dissonance (with neighbors) N Agent Estimated Entropy Agent Cognitive Dissonance N t Ei = Sij log(Sij ) t t Di,j = t t t |Si,k − Sj,k | j=1 k=1 AWASS 2012 Edinburg 10th-16th June Friday, June 8, 2012
  • 28. A Cognitive Heuristic model of Local Community Recognition A more Complex Case The Recipe 3- Reasoning Phase Evolution/Modification of the parameters whenever the discovery phase is “mute” and detection of the change of sign in the second derivative of the entropy (Eti) IF Just a “stupid/smart” rule k(i) k(i) ds=0.1; T t−1 t k=1 Di,k Then k=1 Di,k m(1,i)=m(1,i)*abs((randn*ds)+1); |(Ei + t−1 )| − |(Ei + t )| if m(1,i)1, m(1,i)=1; end; t=t∗ k(i) k(i) if m(1,i)0, m(1,i)=0.01; end; FOR T − t∗ ∆t∗ alpha(1,i) = 1.5*abs((randn*ds)+1); alpha(1,alpha(1,i)1)=1; When the sign of the second derivative of the Agent Entropy changes, the node temporary registers respectively: - The state Vector - The value of the first derivative of Entropy - The absolute Value of the Entropy - The Cognitive Dissonance Time AWASS 2012 Edinburg 10th-16th June Friday, June 8, 2012
  • 29. A Cognitive Heuristic model of Local Community Recognition A more Complex Case The Recipe 4- Inference Phase Synchronized Reset of all the State Vectors and Extrapolation of the firsts K relevant “approximation” of the network (state vectors), by the exploitation of the Ego Entropy. Sample coming from a “typical” discovery period (in humans the day) Knowledge Time Bounded Rationality AWASS 2012 Edinburg 10th-16th June Friday, June 8, 2012
  • 30. A Cognitive Heuristic model of Local Community Recognition A more Complex Case Preliminary Results AWASS 2012 Edinburg 10th-16th June Friday, June 8, 2012
  • 31. A Cognitive Heuristic model of Local Community Recognition A more Complex Case Subject i (i=3) Long Preliminary Results Term bounded Memory AWASS 2012 Edinburg 10th-16th June Friday, June 8, 2012
  • 32. A Cognitive Heuristic model of Local Community Recognition A step forward: Some open problems - Scalability of the algorithm with the System Size (N) - Validation of the Dunbar Theory about the existence of typical sizes of the human communities, due to their cognitive limits (i.e. Bounded Rationality) and the environmental constraints (i.e. Network Topology) - Multidimensional (i.e. more ecological) State Vector - Rewiring, Pruning and human heuristics for the Network Management. AWASS 2012 Edinburg 10th-16th June Friday, June 8, 2012