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Soft Computing (Immune Networks)
                                                            In Artificial Intelligence
                                                                          Yasuhiko Dote
                                                           Muroran Institute of Technology
                                                        Mizumoto 27-1, Muroran 050 8585,Japan
                                                             dote@,csse.muroran-it.ac.jp



                                    ABSTRACT

 iliis paper proposes a novel                        reactive distnbuted artificial     usualh achieve theu tasks i n groups. llcactive a y i t s are sittiatcd
~ntcIiigeiice (dvnaniic)using immune networks and other soft                            they do not take past e~eiits account. a i d can iiot Ibrcsee rlic
                                                                                                                    into
Loiiiptitiiig inethods Fusth. extended sot? computing is defined                        ftiture. Their action is based on hat happens no. ho the ~ C I                          I ~ ~

In .idding             iiiuiiuiie     networks and chaos theory including fractal       distmzuish situations ui Ilie aorld. on the ~  a vthev resognve
and ivavelet to conventional sott computing which is the fusion or                      world indexes and react accordingly llius. reacuve agents can not
coinbinatioii of tiizzv systenis.neural networks and genetic                            plan ahead what they will do But, what can be considered as a
.~lgoritlinis and is suitable to cognitive distnbuted artificial                        weakness is one of theu strengths because the! do not ha^ to
~ i i ~ c l l i ~ e n(static) Next, a novel fuuv neural net(genera1
                      ce                                                                revise their world model when perturbations chaiige the orld                          in

parameter radial based function neural network) is developed in                         an tmepected u a ) Robustness and tatilt toleraiict arc t n o 01 the
order to use                  it    for communication among agents in immune            main properties of reactive agent swttiiis.                 j2   group of r e ; ~ c t ~ w
iictnorhs The geiieral paraineter method                        is   &ended   to an     agents can coinplete tasks even when one o l them b r d s doun.
adaptive structured genetic algorithm to obtain much faster                             The loss of one agent does              iiot   prohibit the coinpietion o l the
convergence rate                       An unbiasedness criterion using distorter( a     whole task, because allocation of roles is achieved locall bv
radial based                  ftiiiction network   i order to optimize parameters
                                                   n                                    perception of the enviroiunental needs. 'Thus, reactive ageiit
resultiiy         in     die reactive distributed      artificial intelligence hnd of   svstems are considered as v:
                                                                                                                   e             flexible and adaptive because[ I 1
(;MD!i) is applied to better generalization propertes. Then, t h s                         In this p a p e r       ;I   nozcaI re;ictive distributrtl            ;irtif'i(,i:il

developed I'tvrv neural net is extended to a h g h performance                          int r llige nrr   is       proposvd        us1 ti g     Ish igrii ro's    i n i i i i i i ne

               1. INTRODUCTION                                                          n r t w o r k ;11~[~r(~~1t~Iil'l;in'li:(il ot1ic.r +oft rwmputin?
                                                                                                                            :inc
      I<eactivit is a hehavior-bewd model of activitv,as opposed to                    approaches In section 11. soft coinpiit ing propoawl I)?
                                                                                                                                                                                               x
the svmbol inanipulation model u.wd in planning.This leads to the                       L1r.L .i.Zadrh[-i] is r x t r n t l t d by :Ititling rhaos coinpiti ing
iiotioii        of cognitive c0st.i e.. the complexity of the over                      and iinmunr net,work theory. i novel fuzzy neural
,Irchitecture needed to achieve a task Cognitive agents support a                       n r h v o r k with grneral p;lr;imrt.c-r statistics calculus taking
coinplz architecture which inems that their cognitive cost is                          advantages of     both fiii.z            ins arid neural iictnorhs i n section
IiigIi.Copnitive agents have intenml representation of the world                        111 In section IV this          IS   eaciided to a high perfonnoiice radial
  l i i ~ l iiiiiist   he    in   adequation with the morld itself T h e process of   hasis tiiiiction iieural iitturh using         oii   adaptive structure genetic
rslating the tiitenial representation and the world is considered as                    algorithinl5 I close to the seneral parciiiieter iiicthod arid o kind                   01'

'I           task On the other hand. reactive agents are simple.
     ~oinple-                                                                          (iMnH[61. In section V these developed nctorks are applied to
cash to uiiderstwd and do not support intemal representation of                         optiiiiize Ishiguro's uimiune network reactive distributed artiticial
the world. Ilius. their cognitive cost is low, and tend to what is                      intelligence.
     cognitive economy. the property of being able to perfom
~alled
cvcn complsr actions with simple architectures Because of their                                        11. EXTENDED SOFT COMPUTING
complexit. cognitive agents are otteii considered as self-                                Soft coiiiputing is proposed bv I)r I* A./.adch/-ll to coiistrtict
 ~iitlicicrit the can nork alone or nith a ten other agents.0n die                     ne generation Ai     [   macliiiie .intelligeiicc quatient) and to solve
coiitrm.          reackive agcnts need companionshp 'I'hey can iiot work                noiiliiiear and inatliematicallv iiimioJelld systems prohlenis
 isolated and they usually achieve their tasks in groups. Reactive                      (tractability) especiallv for cognitive artilicial intelligence In this
agents me companionship. They can not work isolated and thev                            section by adding chaos coiiiptituig arid iiiuiitiiie network thron.
            198 $10.00 0 1998 IEEE
0-7803-4778-1                                                                  ,



                                                                                   1382
ilii   extended soft computing              is   detined for explaining, what thev   s t a r t i n g from t h e same       initi;il   conrhtions. In t h e first
call. complex svstems(7). hunune networks are promising                              case.   :I   coiivcsiit ioniil I2HF" wiis uswl w i t h in~livi~Iu;il
approachos to construct reactive artiticial intelligence[21 and [ 3 ]as              adjusting of i t s vciights. I n t h e s;c.c:ontlc:ise. ( ~ l ' - l i l $ l ~ N
Illustnltcd 111 Fig I                                                                was     simuliitrtl           with   leiirning iilgorit hili     (2)   'l'h~,
                       Hiinian I~eirig i k e .AI
                                     l                                               vfficirnc? of both mrthorls w e r r ~ o n i i ~ ~ r byd using
                                                                                                                                         r
                                             ~~-
                                                Cogniriw                             t h e following m r a s u r e of           convergrncr sprrd
                                 Fuzzy              1)istribur~d
                                Systern             ;I (Stnticl




          Fig.1 Soft computing in AI


                     111. NOVEL FUZZY NEURAL NET
                                                                                                                           I      'J


   I irst. id consider the (iP approach to KHFN weights adjust~ng.                                           Figure2. The simplest G P - R R F N
   ;s soon     iis   IIRI,'N   IS linear   on its eights. the   (iP method may
   bo impIementc.d in a straightfonxard manner The equation
   dcscribiiig (if'-RBFN for a single output network is




   U   IirrI,   1:
                 .      fisrcl initial v a l u e s of' network we1ght.s:      p:                  0'
                                                                                                                          400                 800    1


   si:;il;ir grnrr;il p a r a m e t e r t,o           be adjusted with t h e
   fol I ow 1ng algori t hin                                                                  Figure 3 Im;trning algorithm c:onvt!rgc!nc:o:
                                                                                                       ti)   conventional IZUCN: 11) [;I'-ltt3FN




                                                                              1383
~linic.nsioniilit> IeiirninC                 sprrtl     of    (;P-RBFS           hits
iiicreasril reliitivelj- convent.iona1 RBFN.
IitlFN to be used in adaptive fuzzy system ( A F S ) . in
comnion case. is a s s u m e d to be t.ririned by m e a n s of t h e                                                                     D(P:
                                                                                                                                       Q=-
iiiiniiiiuiii necessary nunibrr of rules (hidden unit
n u m b e r ) ilc.trrniin:ition a n d adjusting of t h e mean a n d
          vwtorh of' iiithvidu:il hidd[,n nodes a s well as
v;iri:incc~                                                                                 Thereforr. the C: KHFNAFS Jetc,rniines Ih c , " t r u r "
                                                                                                            P
thrJir eight5 In t h i s p:iper. t h e simplest                     CP RBFN                 fuzz! rulrj n u m b e r b; incrt~iiir~nt;lli!
                                                                                                                                          rwruii iny: I1 1 ~
li;isc~tl :idapt ive fuzzy system for aut.oinatic fuzz!- rule                             r a k i i l basis fuiiction units ant1 cant inuous est i n i i i t ion
niiinbrr tletemiination is proposed (Fig4). Only t h e                                           of t.he approxlmtition quality through critrriii (4)
nrtworli weights have been a s s u m e d t.o be adjust.ed by                                  evwluat.ion for each fixed GP R B F S structure. T h e
the'       (:P algorithm while t h e c r n t r e s a n d widt.hs of unit                     network t o be determined is the network with 1r:ist
+nsit I V P zon6.s          yere ooiiipletel>- tleteriiiined w i t h the                     v:ilue oi' i, anr! its unit n u m l ~ r rC :issiinic,~l h.
                                                                                                                                      I             to

n(,tworli input Gign;il r:iiigr :inil u n i t                                                    r,qu;il t o t h e f'uzzy r d c ~
                                                                                                                                nuiiilwr            C   I   ~c l i t *   "s:lnililt~"

                                                                                        i'uzz> .ystc"

                                                                                        Let consider t h e proposed                     procrdure    in     c1et.d for r h r
                                                                                        siiiiplest case of t h e               (P RBFN AFS Lvith
                                                                                                                                :                             sciil;rr input
            1                                                                           signal




                                                                                            i n p u t slgniil            II   ( E ' : u := 0 ) iintl linovn nuni1ii.r of

                                                                                            (:aussian                 units r] (for t h e first stage. y = I                 )   thr
                                                                                            sensitive zone center coor&n;ites :ire calculiitcd by
                                                                            ,               relationship (5).
                            CP KBFN BASED AFS
                                       - -                   ___


                 Figure4. G P RBFN adaptive furLy system


nuiiihrr during riich training rpoch
                                                                                        whrrr.   I   is   ii   current unit n u m b e r For y = I ;incl                      I   =I
. "s:iniplr" fuzz!- systrm h a s been present.ed by RBFN
Ui    t h I he   "unknown" n u m b e r of hidden units (i.e.. fuzzy                     for rsiiiiiplr. o n r ['tin recrivr               (': = 0
rules) Starting t'rom the single-unit-(;P-RBFN. the
nr.twork learning h a s been                    performed by t h e scii1:ir             3 ) The initial (basic) sensitive zone w i d t h rqu;il i'or all
grneriil          piiriiiiieter         iirljusting     in     the     Learning         netu.orli units         I:,    c;ilcul;itt.tl as ((5)
                blorli ~
l ' r ~ ~ c c ~ ~ l u r ~ T h e stratly st iitr general p a r a m e t e r

( ~ ~ ~it T I
       : I       ion    f<[fl   ;ind      viiriiince D { P )        have       been

c,:ilcul:ittd          hy      GP         Statist,ics        Estimnt.or.        The
;~pproxiniationquality cnterion (1B) w a s evalutit.etl for
( h p current (:P              KRFN st.ructurr. rind decision on
rh;inging          o ' nrtwork structure p:ir:iiiirter iicljusting
                    f
iii    t   IIP 1,riiriiing Prow[iurr, L~lock. T h e stezicly s t a l e

gr~iii~riil p:ir:iniet<Jr                      ~ ~ s p e c t ; i t i o n E[P}antl


viiriiince U ( P : have been c;ilculatrd by GP Stat.istics

l%timwt.or. The              approx"t.ion             quality crit.enon (1:3)
viis n ~ : i I i i ; i t c dfort he   current (:P RBFN st.ructure. and




                                                                                1384
IC;      p r t o r n i e d biised on            input-out,put s a m p l e d;itii        In this section. the 1JnbiasediiessCriterion                               tisiiig   Distorter I I K I ) )
   ;icwrtlingly to the ;iIgorithm ( 2 ) . Simiiltmeousl>- t h r                            approach( 8 I is used. which has been shon provldlng iiiiproved
                                                                                           features            in        coiiipare to conveiitioiial methods. such as ~ k a i k e
   gc'nrr;il p;ir:iiii~ter iJspwt;it ion                      E { P ) and viiriiince
                                                                                          Infomiation Cntenon ( A I C ) [ 9 ] and its modification for neural
                                                                                          networks Network Infonnation Criterion (MC) [IO], f i n l n i u m
    D[,& :ire estimated with some conventional method.
                                                                                          Descnption Length (MDL)[ I I].
   for      rs-ample. by t h e movlng average calculation.                                Let consider the IJCD method application to the GP RBFN A F S
                                                                                          The overall svstein block diagram IS shown ui Fig. 6.5
                                                                                              Both of them are (iP RBFN with a lemiing procedurs llie
                                                                                            same signals are ted uito the network inputs The diiYerelici: I  111
                                                                                            the u a y of the teaclung signal usage While the reaching signill is
                                                                                            fed mto uppa loop without any changes, the lower iietuork is
                                                                                            trained by "distorted", i.e. nonliiirarly traiisfonned, sample d ~ t a
                                                                                            The output of the lower network is also changed hv the
                                                                                            transfoniier of the same transfer function as fir teachins sgiitl
                                                                                            The critenon ol' the iietuork structure optimality is derivedI61.
                                                                                            nhich         IS    otthe tonnc 7)
                   %ax           (*,;       (:2
                                               :1 0
                                                   - 60-.              C:   umax
                                                                                                                                                    I .( 'D =   5
                                                                                                                                                                /=I
                                                                                                                                                                          (U      ) - I.-? (7 ) ]



                                                                                                                                                                                              (7)
   IJiguref,. Definition of GP RBFN basic parameters
                                                                                          where                '     '   j-th set (vector) ofthe network input data.                  17   overall




  c.v;iIii,ii     NI    :iii(I    iiiemorizrtl.                                           variables of the both networks. Tlie structure of the netnork n i t h
                                                                                          the least value of the cntenon 7 1 is assumed to be a soliition ot
                                                                                          the problem




                                                                                                 -
                                                                                                   :'I    ,-
                                                                                                               -
                                                                                                                '5        ...     -
                                                                                                                                   :,
                                                                                                                                      ,
                                                                                                                                          ,_
                                                                                                                                               -
                                                                                                                                               :!
                                                                                                                                                ,
                                                                                                                                                     - ...
                                                                                                                                                     :               '
  8 ) The strucciirr of            GP RHFN is modified by one inore                             '.-            .                               .     .
  [:iiussiaii          u n i t recruiting: y = q + l . T h e st.eps 1) - 6)

  :I r   i a rvl)i.at 6.i   I                                                                                             .Y ,                       .VI

  The, r r s i i l t of t h e algorif hni 1 )          - 8 ) imp1ement;ition is :I
                                                                                          Fig.6 Determinution of number of units by dibtorter
                                           111   I'uiivtion u n i t s i n c:P IiBFS
                                                                                             The proposed general paaiiieter method in scctioii Ill                                              I
                                                                                                                                                                                                 ,
  $1h i ( . h   provic1c.s I he best :ipproxiniating accur:icy In the
                                                                                          again illustrated                  in   Fig.7.. This idear is extended to aii adaptive
   car ti is of'       fuzxy system theory             i t iiieiiiis   t h e fuzzy rule
                                                                                          structure genetic algonthm[j].                                   Geiiotvpe has an adaptive
  ii ii   m1)c.r clrtc~rminiitionproblriii                 solution. [8]
                                                                                          structure . The string representation                         is   constructed by two l a y s
                       1V 1 IJ(il.1 PERFOIWANCE RI3k.N
                                                                                          One    is      nanied              locus l a y . the other .operon l+er as slio!!ii                   iii
    l'he prohiein of the reliahiliiy n1' the denved model is one of thc
                                                                                          IFig 8  For this reprcseiitatioii .live ne genetic o~)er~i~i~iiis
                                                                                                                                                            iirs
iiiost iiiipottaiit ones. ansing           duruig the identitication task solving
                                                                                          detined in order to scll~orgaiii/t:the siring itriicture and dsvclo1)
Hic model over-titting prevention IS a crucial point tor inam
                                                                                          adaptive genctic change       111 the evolutioiial pro
y l c t i c a l iinplrmeiitations         11s    i t WJS   discussed ui the preceding
                                                                                          approach bnngs attractive optiiiiiimoii results fbr probizins
sections, there are several approaches to cope with this ditficultv
                                                                                          including (iA-dilticultv.Suice genetic algorithm and chaos




                                                                                      1385
Loinputnips are heuristic approaches, they have capabilities of a                                                     fashion.Namelv.onlv one antibodv is allowved lo activate and act
    creative thinking ivav or evolution                                                                                   its corresponding its action to the ivorld 11' its coiiceiitratioii
          H i these techniques the Iuzzv neural net in section III turns Into                                             surpasses the prespecitied the threshhold As shovii                                                       in   Fig10 . ilic
    <I   high pcrlbnnancr radial basis fuiictlon neural network                                                           concentration of the aiitibodv is influenced b the stimulatioii iuid
                                                                                                                                                                        !
          Fig.7 General parameter method                                                                                  suppression                          from other antibodies . the stiiiiulation froin antigeii.
                         String                                                                                           and the dissipation Factor t i c. natural death ). The concentration 01
                                                                                                                          I-th antibody .which is denoted by a, . is calculated b ( X )
                                                                                                                                                                                 !                                                            (I   and
                                                                                                                          0 are the rate of interaction ainong antigens and antibodird.




                                                                                                                     +.   ..... ....
                            ~ a l u elist   t i x e d lenzth
                                                                                                                          +       .~
                        ........                                                                  _ - ~ _
          Locur libel   V     V    ............
                                            ~




                                      .~ ......
                                                             V
                                                                                                         General Parameter
                                                                                                                          . .             _                   ~              ~         -




                                                ...
                                                ..
                                                 ..
                                                 ..                                                      .......
                                                                                                         .......
                                                                                                          ......

                                                N!:eight layer (fixed nominal value)
                                            -.      __           ..-
                                                                 /I;,   ... -- .........
                                                                            Ili,,
                                                                                                         -
                                                                                                         li:,
                                                                                                                     .......
                                                                                                                     II,       ...        It,;,"
                                                                                                            _-        r




                                                                                    .---.;                            *                                        -.:
                                                    *.
                                                    1   ......
                                                         ......
                                                                 ? --
                                                                    i ~ _ _ _
                                                                                ~
                                                                                    :
                                                                                    -       ~-~
                                                                                                            -~   .
                                                                                                                                   .
                                                                                                                                   .
                                                                                                                                  ._. .
                                                                                                                                                 ~




                                                                                                                                                          ~




                                                Inputs : blutually                                          Inputs : Mutually
                                                   Correlated                                        '         Correlated_ _ -
                                        I
                                                .
                                                .       - ....          - ...
                                                                        I  ..                                          --



          Fig.8 Adaptive string structure o f genetic algorithm                                                                                                          N                   N                             N
          V.   SOFT COMPUTLNG I REACTIVE
                              N                                                                                               tlA,(tvdt=( (L ( XI11                                 il (1)    XI11        )    n i Llll .<I. ( 1 )
                                  DISTRIBUTED ARTIFICIAL                                                                                                                 J-I                   1 1                          k 1
                                  INTELLIGENCE                                                                                I
   Is1l l G [ J R O 3 REACTIVE IIISTRIBIJTED ARTIFICIAL                                                                      X IN:, - 0 111: k.                     ~        ii:   (t)                                           (8)
    IN'TEI.Ll(;ENCE WITH M J E NETWORKS[Z] and [i]
                                 MN                                                                                           k=I
     i'he detected current situation and competence modules as                                                                il. ( t -   I ) -1.. (l.rxp(O. 5 - A . ( t ) ) )
    .iitigciis and Antibod~es,respzctiveI~                                                                               liere N                  IS       die number of antibodies. a i d nil denotc~inatclinis
     lo inake a iinonoido(antihody) select a suitable antibodv against                                                    ratio hrtneen antibod!                                       I   and antigen .m), denotes dcgrce 01
                                                                                                                                                                                                          that
    ilw    wrreiit      antigen, it         IS highlv             important I i o ~ the antibodies                        disalloance of antibod I for antibod!                                                     I    'The first and sccond
    arc described .Moreover.it is noticed that the unmunogical                                                            tenns of nght hand side denote                                                  the stiiiiulatioii and supprzssioti
    dntration inecliamsm select an antibody in bottom up manner by                                                        from other antibodies, respectively The thrd tenii represents lhr
    ~ommuiiicating aiiioiig the antibodies. To rwlize the above                                                           stimulation from antigen, and the forth tenn thtl natural death
                                                                                                                                        -~                               . . ~ _ _ _ ~ - .
    rcquireineiits. the descnptioii the description of antibodies are                                                                              -7zEED
                                                                                                                                                                                                   Idiotour

    defined as follons The identitv of a specific antibody is generally
                                                                                                                                    .        .        .   ~     ~~



    ilcleniiinzd        h? the stncture of its paratope and idiotope F i g 5
    dcplcts thc represetitation of antibodies As shown iii this tigure.a
    pair of      precondition action t o paratope .the nuinher of
    ll~wllord antibodies and thc degrce ot' disallowance to idiotope
    ,irc respectively assigned In addition, the structure of paratope is                                                              Food                                Bark               Middle           Hwkwud
                                                                                                                                     Obsmclr                              I vtl               FW               KlEhi
    J I ided into four portions: objects, direction,distance, and action.                                                              EnrrgY
                                                                                                                                                        _     i.cn       and c , r .
                                                                                                                                                                         .                     -      ~
                                                                                                                                                                                                                ni>d et,'

           For adequate selection of antibodies . one state variable called                                               Fig.9 Represent;rtion of antibodies
    concentration is assigned to each antibody. The selection of
    ;Ilitibodics        IS        simply        carried out                 i
                                                                            n           a     wiimer-take a l b




                                                                                                                 1386
hi    order to optimize this reactive distributed artificial intelligence.              Heunstic Model Selection Cnterion I king Distorter and
h e deve1opr:d ftiziv neural net is applied to                      communication        Its Application to Detenmiumatioii of the Nuinher oI
aiiioiig   agents(     antigens and antibodies             )   The developed radial      Hidden IJIUIS in RBFN', .louiial o t rhr: .lap Soc 01'
hasis function neural net is used to optimize parameters in (8) and                      Syt.Contr. and Inf.,Vol Il,N0.2,l99X.pp6 1-70
lbr a inetadyaniics whch produces and removes antigens and                               Y.Dote,"Sott     Coniputmg( Immune Networks)                     111

ailtibodies to make reactive tables.[f]                                                  Artificial Intelligence". Web.site:http-//bik.csse
                                                                                         Muroraim.Japan. I997
                       VL. CONCLUSION                                                    D FhE;hntetov.Y.Dote               and        M S ShaiMi."Sstriii
  1111s paper proposes extaidtxl sott computing to construct 10%                         Identilicetion      bv    the     (iciieral    l'urumeier    Netd
cos^   reactive distrihuted artificial intelligence resutmg in excellent                 Netuorks nith Fuzzy self-or~anizaiion"f'rep. o t the I I"'
decision iiiahng. Table                                                                  IFAC            SVmP             on           Svsrelll
I shows the comparison of the proposed system vvith fuzzy                                                                    I 997.~~829-8.34
                                                                                         IdentiIication,Kitak~shu,Japaii,Vol.2,
svstems on decision making.                                                              H.Al;aike."A New Look at the Statistical Model
                                                                                         Ideiiti!ication".IEEE Tran. On AC.Vol 19.I974.pp71b
 Tirblel Comparison of immune network-                                                   72 3
 based with fuzzy reiisoning approach                                                    M.Murata.S Yoslukava                  uid     S.Aiiian."Nt.r~orL
                                                                                         Infonnation Cntenoii-l)eieniuiuimg die Nuinher ol'
 Iiiiiiiuiic   iietnork-bawd             T'wn reasoning
                                                                                         Hidden     IJiUts        for     Anilicial     Neural       Nelnork
 t3ottoiii-up decentralized             Top-dow~   centralized                           Model".IEEE                    Tran.           on            Neural
 IIsplicit uiteraction                  Implicit interaction
 1)viiamir:                             static                                           Net,Vol.j,No.j, I994,pp865-872.
                                                                                         J kssanen,"A        IJniversal         Prior tor    Integers    and
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             Intt.lli~eiice.Principles and     Applications".Chapter
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                                        and Y.lJchkava."ki
            A.Ishiguro.T.Kondo.Y.Watanabe
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            S stem-Application lo Action Arbitration for an
              !
            Autonornous        Mobile       Robot-",The        SlCE
            Trans. .Vol.33,No.h. I097,pp 524-5.32(inJapanese).
            I. A %adeh?The Role of Soti Computing mid Fuzzv
            Logic      iii   the Conception.Design. Development of
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Artificial Intelligence

  • 1. Soft Computing (Immune Networks) In Artificial Intelligence Yasuhiko Dote Muroran Institute of Technology Mizumoto 27-1, Muroran 050 8585,Japan dote@,csse.muroran-it.ac.jp ABSTRACT iliis paper proposes a novel reactive distnbuted artificial usualh achieve theu tasks i n groups. llcactive a y i t s are sittiatcd ~ntcIiigeiice (dvnaniic)using immune networks and other soft they do not take past e~eiits account. a i d can iiot Ibrcsee rlic into Loiiiptitiiig inethods Fusth. extended sot? computing is defined ftiture. Their action is based on hat happens no. ho the ~ C I I ~ ~ In .idding iiiuiiuiie networks and chaos theory including fractal distmzuish situations ui Ilie aorld. on the ~ a vthev resognve and ivavelet to conventional sott computing which is the fusion or world indexes and react accordingly llius. reacuve agents can not coinbinatioii of tiizzv systenis.neural networks and genetic plan ahead what they will do But, what can be considered as a .~lgoritlinis and is suitable to cognitive distnbuted artificial weakness is one of theu strengths because the! do not ha^ to ~ i i ~ c l l i ~ e n(static) Next, a novel fuuv neural net(genera1 ce revise their world model when perturbations chaiige the orld in parameter radial based function neural network) is developed in an tmepected u a ) Robustness and tatilt toleraiict arc t n o 01 the order to use it for communication among agents in immune main properties of reactive agent swttiiis. j2 group of r e ; ~ c t ~ w iictnorhs The geiieral paraineter method is &ended to an agents can coinplete tasks even when one o l them b r d s doun. adaptive structured genetic algorithm to obtain much faster The loss of one agent does iiot prohibit the coinpietion o l the convergence rate An unbiasedness criterion using distorter( a whole task, because allocation of roles is achieved locall bv radial based ftiiiction network i order to optimize parameters n perception of the enviroiunental needs. 'Thus, reactive ageiit resultiiy in die reactive distributed artificial intelligence hnd of svstems are considered as v: e flexible and adaptive because[ I 1 (;MD!i) is applied to better generalization propertes. Then, t h s In this p a p e r ;I nozcaI re;ictive distributrtl ;irtif'i(,i:il developed I'tvrv neural net is extended to a h g h performance int r llige nrr is proposvd us1 ti g Ish igrii ro's i n i i i i i i ne 1. INTRODUCTION n r t w o r k ;11~[~r(~~1t~Iil'l;in'li:(il ot1ic.r +oft rwmputin? :inc I<eactivit is a hehavior-bewd model of activitv,as opposed to approaches In section 11. soft coinpiit ing propoawl I)? x the svmbol inanipulation model u.wd in planning.This leads to the L1r.L .i.Zadrh[-i] is r x t r n t l t d by :Ititling rhaos coinpiti ing iiotioii of cognitive c0st.i e.. the complexity of the over and iinmunr net,work theory. i novel fuzzy neural ,Irchitecture needed to achieve a task Cognitive agents support a n r h v o r k with grneral p;lr;imrt.c-r statistics calculus taking coinplz architecture which inems that their cognitive cost is advantages of both fiii.z ins arid neural iictnorhs i n section IiigIi.Copnitive agents have intenml representation of the world 111 In section IV this IS eaciided to a high perfonnoiice radial l i i ~ l iiiiiist he in adequation with the morld itself T h e process of hasis tiiiiction iieural iitturh using oii adaptive structure genetic rslating the tiitenial representation and the world is considered as algorithinl5 I close to the seneral parciiiieter iiicthod arid o kind 01' 'I task On the other hand. reactive agents are simple. ~oinple- (iMnH[61. In section V these developed nctorks are applied to cash to uiiderstwd and do not support intemal representation of optiiiiize Ishiguro's uimiune network reactive distributed artiticial the world. Ilius. their cognitive cost is low, and tend to what is intelligence. cognitive economy. the property of being able to perfom ~alled cvcn complsr actions with simple architectures Because of their 11. EXTENDED SOFT COMPUTING complexit. cognitive agents are otteii considered as self- Soft coiiiputing is proposed bv I)r I* A./.adch/-ll to coiistrtict ~iitlicicrit the can nork alone or nith a ten other agents.0n die ne generation Ai [ macliiiie .intelligeiicc quatient) and to solve coiitrm. reackive agcnts need companionshp 'I'hey can iiot work noiiliiiear and inatliematicallv iiimioJelld systems prohlenis isolated and they usually achieve their tasks in groups. Reactive (tractability) especiallv for cognitive artilicial intelligence In this agents me companionship. They can not work isolated and thev section by adding chaos coiiiptituig arid iiiuiitiiie network thron. 198 $10.00 0 1998 IEEE 0-7803-4778-1 , 1382
  • 2. ilii extended soft computing is detined for explaining, what thev s t a r t i n g from t h e same initi;il conrhtions. In t h e first call. complex svstems(7). hunune networks are promising case. :I coiivcsiit ioniil I2HF" wiis uswl w i t h in~livi~Iu;il approachos to construct reactive artiticial intelligence[21 and [ 3 ]as adjusting of i t s vciights. I n t h e s;c.c:ontlc:ise. ( ~ l ' - l i l $ l ~ N Illustnltcd 111 Fig I was simuliitrtl with leiirning iilgorit hili (2) 'l'h~, Hiinian I~eirig i k e .AI l vfficirnc? of both mrthorls w e r r ~ o n i i ~ ~ r byd using r ~~- Cogniriw t h e following m r a s u r e of convergrncr sprrd Fuzzy 1)istribur~d Systern ;I (Stnticl Fig.1 Soft computing in AI 111. NOVEL FUZZY NEURAL NET I 'J I irst. id consider the (iP approach to KHFN weights adjust~ng. Figure2. The simplest G P - R R F N ;s soon iis IIRI,'N IS linear on its eights. the (iP method may bo impIementc.d in a straightfonxard manner The equation dcscribiiig (if'-RBFN for a single output network is U IirrI, 1: . fisrcl initial v a l u e s of' network we1ght.s: p: 0' 400 800 1 si:;il;ir grnrr;il p a r a m e t e r t,o be adjusted with t h e fol I ow 1ng algori t hin Figure 3 Im;trning algorithm c:onvt!rgc!nc:o: ti) conventional IZUCN: 11) [;I'-ltt3FN 1383
  • 3. ~linic.nsioniilit> IeiirninC sprrtl of (;P-RBFS hits iiicreasril reliitivelj- convent.iona1 RBFN. IitlFN to be used in adaptive fuzzy system ( A F S ) . in comnion case. is a s s u m e d to be t.ririned by m e a n s of t h e D(P: Q=- iiiiniiiiuiii necessary nunibrr of rules (hidden unit n u m b e r ) ilc.trrniin:ition a n d adjusting of t h e mean a n d vwtorh of' iiithvidu:il hidd[,n nodes a s well as v;iri:incc~ Thereforr. the C: KHFNAFS Jetc,rniines Ih c , " t r u r " P thrJir eight5 In t h i s p:iper. t h e simplest CP RBFN fuzz! rulrj n u m b e r b; incrt~iiir~nt;lli! rwruii iny: I1 1 ~ li;isc~tl :idapt ive fuzzy system for aut.oinatic fuzz!- rule r a k i i l basis fuiiction units ant1 cant inuous est i n i i i t ion niiinbrr tletemiination is proposed (Fig4). Only t h e of t.he approxlmtition quality through critrriii (4) nrtworli weights have been a s s u m e d t.o be adjust.ed by evwluat.ion for each fixed GP R B F S structure. T h e the' (:P algorithm while t h e c r n t r e s a n d widt.hs of unit network t o be determined is the network with 1r:ist +nsit I V P zon6.s yere ooiiipletel>- tleteriiiined w i t h the v:ilue oi' i, anr! its unit n u m l ~ r rC :issiinic,~l h. I to n(,tworli input Gign;il r:iiigr :inil u n i t r,qu;il t o t h e f'uzzy r d c ~ nuiiilwr C I ~c l i t * "s:lnililt~" i'uzz> .ystc" Let consider t h e proposed procrdure in c1et.d for r h r siiiiplest case of t h e (P RBFN AFS Lvith : sciil;rr input 1 signal i n p u t slgniil II ( E ' : u := 0 ) iintl linovn nuni1ii.r of (:aussian units r] (for t h e first stage. y = I ) thr sensitive zone center coor&n;ites :ire calculiitcd by , relationship (5). CP KBFN BASED AFS - - ___ Figure4. G P RBFN adaptive furLy system nuiiihrr during riich training rpoch whrrr. I is ii current unit n u m b e r For y = I ;incl I =I . "s:iniplr" fuzz!- systrm h a s been present.ed by RBFN Ui t h I he "unknown" n u m b e r of hidden units (i.e.. fuzzy for rsiiiiiplr. o n r ['tin recrivr (': = 0 rules) Starting t'rom the single-unit-(;P-RBFN. the nr.twork learning h a s been performed by t h e scii1:ir 3 ) The initial (basic) sensitive zone w i d t h rqu;il i'or all grneriil piiriiiiieter iirljusting in the Learning netu.orli units I:, c;ilcul;itt.tl as ((5) blorli ~ l ' r ~ ~ c c ~ ~ l u r ~ T h e stratly st iitr general p a r a m e t e r ( ~ ~ ~it T I : I ion f<[fl ;ind viiriiince D { P ) have been c,:ilcul:ittd hy GP Statist,ics Estimnt.or. The ;~pproxiniationquality cnterion (1B) w a s evalutit.etl for ( h p current (:P KRFN st.ructurr. rind decision on rh;inging o ' nrtwork structure p:ir:iiiirter iicljusting f iii t IIP 1,riiriiing Prow[iurr, L~lock. T h e stezicly s t a l e gr~iii~riil p:ir:iniet<Jr ~ ~ s p e c t ; i t i o n E[P}antl viiriiince U ( P : have been c;ilculatrd by GP Stat.istics l%timwt.or. The approx"t.ion quality crit.enon (1:3) viis n ~ : i I i i ; i t c dfort he current (:P RBFN st.ructure. and 1384
  • 4. IC; p r t o r n i e d biised on input-out,put s a m p l e d;itii In this section. the 1JnbiasediiessCriterion tisiiig Distorter I I K I ) ) ;icwrtlingly to the ;iIgorithm ( 2 ) . Simiiltmeousl>- t h r approach( 8 I is used. which has been shon provldlng iiiiproved features in coiiipare to conveiitioiial methods. such as ~ k a i k e gc'nrr;il p;ir:iiii~ter iJspwt;it ion E { P ) and viiriiince Infomiation Cntenon ( A I C ) [ 9 ] and its modification for neural networks Network Infonnation Criterion (MC) [IO], f i n l n i u m D[,& :ire estimated with some conventional method. Descnption Length (MDL)[ I I]. for rs-ample. by t h e movlng average calculation. Let consider the IJCD method application to the GP RBFN A F S The overall svstein block diagram IS shown ui Fig. 6.5 Both of them are (iP RBFN with a lemiing procedurs llie same signals are ted uito the network inputs The diiYerelici: I 111 the u a y of the teaclung signal usage While the reaching signill is fed mto uppa loop without any changes, the lower iietuork is trained by "distorted", i.e. nonliiirarly traiisfonned, sample d ~ t a The output of the lower network is also changed hv the transfoniier of the same transfer function as fir teachins sgiitl The critenon ol' the iietuork structure optimality is derivedI61. nhich IS otthe tonnc 7) %ax (*,; (:2 :1 0 - 60-. C: umax I .( 'D = 5 /=I (U ) - I.-? (7 ) ] (7) IJiguref,. Definition of GP RBFN basic parameters where ' ' j-th set (vector) ofthe network input data. 17 overall c.v;iIii,ii NI :iii(I iiiemorizrtl. variables of the both networks. Tlie structure of the netnork n i t h the least value of the cntenon 7 1 is assumed to be a soliition ot the problem - :'I ,- - '5 ... - :, , ,_ - :! , - ... : ' 8 ) The strucciirr of GP RHFN is modified by one inore '.- . . . [:iiussiaii u n i t recruiting: y = q + l . T h e st.eps 1) - 6) :I r i a rvl)i.at 6.i I .Y , .VI The, r r s i i l t of t h e algorif hni 1 ) - 8 ) imp1ement;ition is :I Fig.6 Determinution of number of units by dibtorter 111 I'uiivtion u n i t s i n c:P IiBFS The proposed general paaiiieter method in scctioii Ill I , $1h i ( . h provic1c.s I he best :ipproxiniating accur:icy In the again illustrated in Fig.7.. This idear is extended to aii adaptive car ti is of' fuzxy system theory i t iiieiiiis t h e fuzzy rule structure genetic algonthm[j]. Geiiotvpe has an adaptive ii ii m1)c.r clrtc~rminiitionproblriii solution. [8] structure . The string representation is constructed by two l a y s 1V 1 IJ(il.1 PERFOIWANCE RI3k.N One is nanied locus l a y . the other .operon l+er as slio!!ii iii l'he prohiein of the reliahiliiy n1' the denved model is one of thc IFig 8 For this reprcseiitatioii .live ne genetic o~)er~i~i~iiis iirs iiiost iiiipottaiit ones. ansing duruig the identitication task solving detined in order to scll~orgaiii/t:the siring itriicture and dsvclo1) Hic model over-titting prevention IS a crucial point tor inam adaptive genctic change 111 the evolutioiial pro y l c t i c a l iinplrmeiitations 11s i t WJS discussed ui the preceding approach bnngs attractive optiiiiiimoii results fbr probizins sections, there are several approaches to cope with this ditficultv including (iA-dilticultv.Suice genetic algorithm and chaos 1385
  • 5. Loinputnips are heuristic approaches, they have capabilities of a fashion.Namelv.onlv one antibodv is allowved lo activate and act creative thinking ivav or evolution its corresponding its action to the ivorld 11' its coiiceiitratioii H i these techniques the Iuzzv neural net in section III turns Into surpasses the prespecitied the threshhold As shovii in Fig10 . ilic <I high pcrlbnnancr radial basis fuiictlon neural network concentration of the aiitibodv is influenced b the stimulatioii iuid ! Fig.7 General parameter method suppression from other antibodies . the stiiiiulation froin antigeii. String and the dissipation Factor t i c. natural death ). The concentration 01 I-th antibody .which is denoted by a, . is calculated b ( X ) ! (I and 0 are the rate of interaction ainong antigens and antibodird. +. ..... .... ~ a l u elist t i x e d lenzth + .~ ........ _ - ~ _ Locur libel V V ............ ~ .~ ...... V General Parameter . . _ ~ ~ - ... .. .. .. ....... ....... ...... N!:eight layer (fixed nominal value) -. __ ..- /I;, ... -- ......... Ili,, - li:, ....... II, ... It,;," _- r .---.; * -.: *. 1 ...... ...... ? -- i ~ _ _ _ ~ : - ~-~ -~ . . . ._. . ~ ~ Inputs : blutually Inputs : Mutually Correlated ' Correlated_ _ - I . . - .... - ... I .. -- Fig.8 Adaptive string structure o f genetic algorithm N N N V. SOFT COMPUTLNG I REACTIVE N tlA,(tvdt=( (L ( XI11 il (1) XI11 ) n i Llll .<I. ( 1 ) DISTRIBUTED ARTIFICIAL J-I 1 1 k 1 INTELLIGENCE I Is1l l G [ J R O 3 REACTIVE IIISTRIBIJTED ARTIFICIAL X IN:, - 0 111: k. ~ ii: (t) (8) IN'TEI.Ll(;ENCE WITH M J E NETWORKS[Z] and [i] MN k=I i'he detected current situation and competence modules as il. ( t - I ) -1.. (l.rxp(O. 5 - A . ( t ) ) ) .iitigciis and Antibod~es,respzctiveI~ liere N IS die number of antibodies. a i d nil denotc~inatclinis lo inake a iinonoido(antihody) select a suitable antibodv against ratio hrtneen antibod! I and antigen .m), denotes dcgrce 01 that ilw wrreiit antigen, it IS highlv important I i o ~ the antibodies disalloance of antibod I for antibod! I 'The first and sccond arc described .Moreover.it is noticed that the unmunogical tenns of nght hand side denote the stiiiiulatioii and supprzssioti dntration inecliamsm select an antibody in bottom up manner by from other antibodies, respectively The thrd tenii represents lhr ~ommuiiicating aiiioiig the antibodies. To rwlize the above stimulation from antigen, and the forth tenn thtl natural death -~ . . ~ _ _ _ ~ - . rcquireineiits. the descnptioii the description of antibodies are -7zEED Idiotour defined as follons The identitv of a specific antibody is generally . . . ~ ~~ ilcleniiinzd h? the stncture of its paratope and idiotope F i g 5 dcplcts thc represetitation of antibodies As shown iii this tigure.a pair of precondition action t o paratope .the nuinher of ll~wllord antibodies and thc degrce ot' disallowance to idiotope ,irc respectively assigned In addition, the structure of paratope is Food Bark Middle Hwkwud Obsmclr I vtl FW KlEhi J I ided into four portions: objects, direction,distance, and action. EnrrgY _ i.cn and c , r . . - ~ ni>d et,' For adequate selection of antibodies . one state variable called Fig.9 Represent;rtion of antibodies concentration is assigned to each antibody. The selection of ;Ilitibodics IS simply carried out i n a wiimer-take a l b 1386
  • 6. hi order to optimize this reactive distributed artificial intelligence. Heunstic Model Selection Cnterion I king Distorter and h e deve1opr:d ftiziv neural net is applied to communication Its Application to Detenmiumatioii of the Nuinher oI aiiioiig agents( antigens and antibodies ) The developed radial Hidden IJIUIS in RBFN', .louiial o t rhr: .lap Soc 01' hasis function neural net is used to optimize parameters in (8) and Syt.Contr. and Inf.,Vol Il,N0.2,l99X.pp6 1-70 lbr a inetadyaniics whch produces and removes antigens and Y.Dote,"Sott Coniputmg( Immune Networks) 111 ailtibodies to make reactive tables.[f] Artificial Intelligence". Web.site:http-//bik.csse Muroraim.Japan. I997 VL. CONCLUSION D FhE;hntetov.Y.Dote and M S ShaiMi."Sstriii 1111s paper proposes extaidtxl sott computing to construct 10% Identilicetion bv the (iciieral l'urumeier Netd cos^ reactive distrihuted artificial intelligence resutmg in excellent Netuorks nith Fuzzy self-or~anizaiion"f'rep. o t the I I"' decision iiiahng. Table IFAC SVmP on Svsrelll I shows the comparison of the proposed system vvith fuzzy I 997.~~829-8.34 IdentiIication,Kitak~shu,Japaii,Vol.2, svstems on decision making. H.Al;aike."A New Look at the Statistical Model Ideiiti!ication".IEEE Tran. On AC.Vol 19.I974.pp71b Tirblel Comparison of immune network- 72 3 based with fuzzy reiisoning approach M.Murata.S Yoslukava uid S.Aiiian."Nt.r~orL Infonnation Cntenoii-l)eieniuiuimg die Nuinher ol' Iiiiiiiuiic iietnork-bawd T'wn reasoning Hidden IJiUts for Anilicial Neural Nelnork t3ottoiii-up decentralized Top-dow~ centralized Model".IEEE Tran. on Neural IIsplicit uiteraction Implicit interaction 1)viiamir: static Net,Vol.j,No.j, I994,pp865-872. J kssanen,"A IJniversal Prior tor Integers and REFERENCES Estimation bv M " u m Descriptloii I .engtIiC. Annals 01' _1 lcrhcr."Reactive I)istnhwed Arti ticial Statistics.Vol I I.No 12.l9X3.pp4l(~-i.~l Intt.lli~eiice.Principles and Applications".Chapter I I .I:oundations of Distnbuted Artificial hitelligence,cdited bv GM.P.O'harc and N. R.Jemngs,John Wilev&Sons Innc.,New York, 1 9 9 6 . ~ ~ 2 8 7 - 3 14. and Y.lJchkava."ki A.Ishiguro.T.Kondo.Y.Watanabe Iniiiiunogical Approach to Behavior Control of .~lutoiioimious Mobile Ilobots-Coiistructioii Immune Netuorks Through Leanimg--'.Proceedmgs of the hitexnational Workshop on Solt Computing in Industry( IWSCI'96),Muroran,Jap~i.April17-28.l996,pp 253-267. A 1shiguro.YWatanahe.'l:Kondo and Y I Ichil;aa."Constrctioii of a Decentralized Consensus-Maklng Netaork Based on the Inunune S stem-Application lo Action Arbitration for an ! Autonornous Mobile Robot-",The SlCE Trans. .Vol.33,No.h. I097,pp 524-5.32(inJapanese). I. A %adeh?The Role of Soti Computing mid Fuzzv Logic iii the Conception.Design. Development of 1111211igeiit Svstems".€'roc Of the I990 PP I .3b- IWSC I'Oh.Mtiroraii.Japaii.ApnI27-ZX. I .37. (I'leiian: Speaker) IC Ohkura and K.11eda..'Srlf-Orgaiii/;ing of Stnng Structure arid Adaptive < imetic Swrch".Proceedings of the IWSC 1'06 pp 172- I77 t r TaLeuclu and T Mpos1ii.H Ishihashi and H.Tanaka,"A 1387