SlideShare ist ein Scribd-Unternehmen logo
1 von 74
Logical Agents
V.Saranya
AP/CSE
Sri Vidya College of Engineering and
Technology,
Virudhunagar
Outline
• Knowledge-based agents
• Wumpus world
• Logic in general - models and entailment
• Propositional (Boolean) logic
• Equivalence, validity, satisfiability
• Inference rules and theorem proving
– forward chaining
– backward chaining
– resolution
–
Knowledge bases
• Knowledge base = set of sentences in a formal language
• Declarative approach to building an agent (or other system):
– Tell it what it needs to know
• Then it can Ask itself what to do - answers should follow from the
KB
• Agents can be viewed at the knowledge level
i.e., what they know, regardless of how implemented
• Or at the implementation level
– i.e., data structures in KB and algorithms that manipulate them
–
–
A simple knowledge-based agent
• The agent must be able to:
– Represent states, actions, etc.
– Incorporate new percepts
– Update internal representations of the world
– Deduce hidden properties of the world
– Deduce appropriate actions
–
Wumpus World PEAS
description
• Performance measure
– gold +1000, death -1000
– -1 per step, -10 for using the arrow
• Environment
– Squares adjacent to wumpus are smelly
– Squares adjacent to pit are breezy
– Glitter iff gold is in the same square
– Shooting kills wumpus if you are facing it
– Shooting uses up the only arrow
– Grabbing picks up gold if in same square
– Releasing drops the gold in same square
• Sensors: Stench, Breeze, Glitter, Bump, Scream
• Actuators: Left turn, Right turn, Forward, Grab, Release, Shoot
Wumpus world characterization
• Fully Observable No – only local perception
• Deterministic Yes – outcomes exactly specified
• Episodic No – sequential at the level of actions
• Static Yes – Wumpus and Pits do not move
• Discrete Yes
• Single-agent? Yes – Wumpus is essentially a
natural feature
•
•
•
Exploring a wumpus world
Exploring a wumpus world
Exploring a wumpus world
Exploring a wumpus world
Exploring a wumpus world
Exploring a wumpus world
Exploring a wumpus world
Exploring a wumpus world
Logic in general
• Logics are formal languages for representing information
such that conclusions can be drawn
• Syntax defines the sentences in the language
• Semantics define the "meaning" of sentences;
– i.e., define truth of a sentence in a world
• E.g., the language of arithmetic
– x+2 ≥ y is a sentence; x2+y > {} is not a sentence
– x+2 ≥ y is true iff the number x+2 is no less than the number y
– x+2 ≥ y is true in a world where x = 7, y = 1
– x+2 ≥ y is false in a world where x = 0, y = 6
–
–
Entailment
• Entailment means that one thing follows from
another:
KB ╞ α
• Knowledge base KB entails sentence α if and
only if α is true in all worlds where KB is true
– E.g., the KB containing “the Giants won” and “the
Reds won” entails “Either the Giants won or the Reds
won”
– E.g., x+y = 4 entails 4 = x+y
– Entailment is a relationship between sentences (i.e.,
syntax) that is based on semantics
–
–
Models
• Logicians typically think in terms of models, which are formally
structured worlds with respect to which truth can be evaluated
• We say m is a model of a sentence α if α is true in m
• M(α) is the set of all models of α
• Then KB ╞ α iff M(KB) ⊆ M(α)
– E.g. KB = Giants won and Reds
won α = Giants won
–
•
•
•
Entailment in the wumpus world
Situation after detecting
nothing in [1,1], moving
right, breeze in [2,1]
Consider possible models for
KB assuming only pits
3 Boolean choices ⇒ 8
possible models
Wumpus models
Wumpus models
• KB = wumpus-world rules + observations
•
Wumpus models
• KB = wumpus-world rules + observations
• α1 = "[1,2] is safe", KB ╞ α1, proved by model checking
•
Wumpus models
• KB = wumpus-world rules + observations
Wumpus models
• KB = wumpus-world rules + observations
• α2 = "[2,2] is safe", KB ╞ α2
•
Inference
• KB ├i α = sentence α can be derived from KB by
procedure i
• Soundness: i is sound if whenever KB ├i α, it is also true
that KB╞ α
• Completeness: i is complete if whenever KB╞ α, it is also
true that KB ├i α
• Preview: we will define a logic (first-order logic) which is
expressive enough to say almost anything of interest,
and for which there exists a sound and complete
inference procedure.
• That is, the procedure will answer any question whose
answer follows from what is known by the KB.
•
Propositional logic: Syntax
• Propositional logic is the simplest logic – illustrates
basic ideas
• The proposition symbols P1, P2 etc are sentences
– If S is a sentence, ¬S is a sentence (negation)
– If S1 and S2 are sentences, S1 ∧ S2 is a sentence (conjunction)
– If S1 and S2 are sentences, S1 ∨ S2 is a sentence (disjunction)
– If S1 and S2 are sentences, S1 ⇒ S2 is a sentence (implication)
– If S1 and S2 are sentences, S1 ⇔ S2 is a sentence (biconditional)
–
–
–
Propositional logic: Semantics
Each model specifies true/false for each proposition symbol
E.g. P1,2 P2,2 P3,1
false true false
With these symbols, 8 possible models, can be enumerated automatically.
Rules for evaluating truth with respect to a model m:
¬S is true iff S is false
S1 ∧ S2 is true iff S1 is true and S2 is true
S1 ∨ S2 is true iff S1is true or S2 is true
S1 ⇒ S2 is true iff S1 is false or S2 is true
i.e., is false iff S1 is true and S2 is false
S1 ⇔ S2 is true iff S1⇒S2 is true andS2⇒S1 is true
Simple recursive process evaluates an arbitrary sentence, e.g.,
¬P1,2 ∧ (P2,2 ∨P3,1) = true ∧ (true ∨ false) = true ∧ true = true
Truth tables for connectives
Wumpus world sentences
Let Pi,j be true if there is a pit in [i, j].
Let Bi,j be true if there is a breeze in [i, j].
¬ P1,1
¬B1,1
B2,1
• "Pits cause breezes in adjacent squares"
B1,1 ⇔ (P1,2 ∨ P2,1)
B2,1 ⇔ (P1,1 ∨ P2,2 ∨ P3,1)
»
Truth tables for inference
Inference by enumeration
• Depth-first enumeration of all models is sound and complete
• For n symbols, time complexity is O(2n
), space complexity is O(n)
•
•
Logical equivalence
• Two sentences are logically equivalent} iff true in same
models: α ≡ ß iff α╞ β and β╞ α
•
•
Validity and satisfiability
A sentence is valid if it is true in all models,
e.g., True, A ∨¬A, A ⇒ A, (A ∧ (A ⇒ B)) ⇒ B
Validity is connected to inference via the Deduction Theorem:
KB ╞ α if and only if (KB ⇒ α) is valid
A sentence is satisfiable if it is true in some model
e.g., A∨ B, C
A sentence is unsatisfiable if it is true in no models
e.g., A∧¬A
Satisfiability is connected to inference via the following:
KB ╞ α if and only if (KB ∧¬α) is unsatisfiable
–
–
Proof methods
• Proof methods divide into (roughly) two kinds:
– Application of inference rules
• Legitimate (sound) generation of new sentences from old
• Proof = a sequence of inference rule applications
Can use inference rules as operators in a standard search
algorithm
• Typically require transformation of sentences into a normal form
– Model checking
• truth table enumeration (always exponential in n)
• improved backtracking, e.g., Davis--Putnam-Logemann-Loveland
(DPLL)
• heuristic search in model space (sound but incomplete)
e.g., min-conflicts-like hill-climbing algorithms
•
•
Resolution
Conjunctive Normal Form (CNF)
conjunction of disjunctions of literals
clauses
E.g., (A ∨ ¬B) ∧ (B ∨ ¬C ∨ ¬D)
• Resolution inference rule (for CNF):
li ∨… ∨ lk, m1 ∨ … ∨ mn
li ∨ … ∨ li-1 ∨li+1 ∨ … ∨ lk ∨ m1 ∨ … ∨ mj-1 ∨ mj+1 ∨... ∨ mn
where li and mj are complementary literals.
E.g., P1,3 ∨ P2,2, ¬P2,2
P1,3
• Resolution is sound and complete
for propositional logic
»
Resolution
Soundness of resolution inference rule:
¬(li ∨ … ∨ li-1 ∨li+1 ∨ … ∨ lk) ⇒ li
¬mj ⇒ (m1 ∨ … ∨ mj-1 ∨ mj+1 ∨... ∨ mn)
¬(li ∨ … ∨ li-1 ∨li+1 ∨ … ∨ lk) ⇒ (m1 ∨ … ∨ mj-1 ∨ mj+1 ∨... ∨ mn)
Conversion to CNF
B1,1 ⇔ (P1,2 ∨ P2,1)β
1. Eliminate ⇔, replacing α ⇔ β with (α ⇒ β)∧(β ⇒ α).
(B1,1 ⇒ (P1,2 ∨ P2,1)) ∧ ((P1,2 ∨ P2,1) ⇒ B1,1)
2. Eliminate ⇒, replacing α ⇒ β with ¬α∨ β.
(¬B1,1 ∨ P1,2 ∨ P2,1) ∧ (¬(P1,2 ∨ P2,1) ∨ B1,1)
3. Move ¬ inwards using de Morgan's rules and double-
negation:
(¬B1,1 ∨ P1,2 ∨ P2,1) ∧ ((¬P1,2 ∨ ¬P2,1) ∨ B1,1)
4. Apply distributivity law (∧ over ∨) and flatten:
(¬B1,1 ∨ P1,2 ∨ P2,1) ∧ (¬P1,2 ∨ B1,1) ∧ (¬P2,1 ∨ B1,1)
–
Resolution algorithm
• Proof by contradiction, i.e., show KB∧¬α unsatisfiable
•
Resolution example
• KB = (B1,1 ⇔ (P1,2∨ P2,1)) ∧¬ B1,1 α = ¬P1,2
•
Forward and backward chaining
• Horn Form (restricted)
KB = conjunction of Horn clauses
– Horn clause =
• proposition symbol; or
• (conjunction of symbols) ⇒ symbol
– E.g., C ∧ (B ⇒ A) ∧ (C ∧ D ⇒ B)
• Modus Ponens (for Horn Form): complete for Horn KBs
α1, … ,αn, α1 ∧ … ∧ αn ⇒ β
β
• Can be used with forward chaining or backward chaining.
• These algorithms are very natural and run in linear time
•
•
»
Forward chaining
• Idea: fire any rule whose premises are satisfied in the
KB,
– add its conclusion to the KB, until query is found
Forward chaining algorithm
• Forward chaining is sound and complete for
Horn KB
•
Forward chaining example
Forward chaining example
Forward chaining example
Forward chaining example
Forward chaining example
Forward chaining example
Forward chaining example
Forward chaining example
Proof of completeness
• FC derives every atomic sentence that is
entailed by KB
1. FC reaches a fixed point where no new atomic
sentences are derived
2. Consider the final state as a model m, assigning
true/false to symbols
3. Every clause in the original KB is true in m
a1 ∧ … ∧ ak ⇒ b
1. Hence m is a model of KB
2. If KB╞ q, q is true in every model of KB, including m
3.
–
•
Backward chaining
Idea: work backwards from the query q:
to prove q by BC,
check if q is known already, or
prove by BC all premises of some rule concluding q
Avoid loops: check if new subgoal is already on the goal
stack
Avoid repeated work: check if new subgoal
1. has already been proved true, or
2. has already failed
3.
–
Backward chaining example
Backward chaining example
Backward chaining example
Backward chaining example
Backward chaining example
Backward chaining example
Backward chaining example
Backward chaining example
Backward chaining example
Backward chaining example
Forward vs. backward chaining
• FC is data-driven, automatic, unconscious processing,
– e.g., object recognition, routine decisions
• May do lots of work that is irrelevant to the goal
• BC is goal-driven, appropriate for problem-solving,
– e.g., Where are my keys? How do I get into a PhD program?
• Complexity of BC can be much less than linear in size of
KB
»
»
–
Efficient propositional inference
Two families of efficient algorithms for propositional
inference:
Complete backtracking search algorithms
• DPLL algorithm (Davis, Putnam, Logemann, Loveland)
• Incomplete local search algorithms
– WalkSAT algorithm
–
•
The DPLL algorithm
Determine if an input propositional logic sentence (in CNF) is
satisfiable.
Improvements over truth table enumeration:
1. Early termination
A clause is true if any literal is true.
A sentence is false if any clause is false.
1. Pure symbol heuristic
Pure symbol: always appears with the same "sign" in all clauses.
e.g., In the three clauses (A ∨ ¬B), (¬B ∨ ¬C), (C ∨ A), A and B are pure, C is
impure.
Make a pure symbol literal true.
1. Unit clause heuristic
Unit clause: only one literal in the clause
The only literal in a unit clause must be true.
The DPLL algorithm
The WalkSAT algorithm
• Incomplete, local search algorithm
• Evaluation function: The min-conflict heuristic of
minimizing the number of unsatisfied clauses
• Balance between greediness and randomness
•
•
•
The WalkSAT algorithm
Hard satisfiability problems
• Consider random 3-CNF sentences. e.g.,
(¬D ∨ ¬B ∨ C) ∧ (B ∨ ¬A ∨ ¬C) ∧ (¬C ∨
¬B ∨ E) ∧ (E ∨ ¬D ∨ B) ∧ (B ∨ E ∨ ¬C)
n = number of symbols
–Hard problems seem to cluster near m/n
= 4.3 (critical point)
–
• m = number of clauses
•
Hard satisfiability problems
Hard satisfiability problems
• Median runtime for 100 satisfiable random 3-
CNF sentences, n = 50
•
Inference-based agents in the
wumpus world
A wumpus-world agent using propositional logic:
¬P1,1
¬W1,1
Bx,y ⇔ (Px,y+1 ∨ Px,y-1 ∨ Px+1,y ∨ Px-1,y)
Sx,y ⇔ (Wx,y+1 ∨ Wx,y-1 ∨ Wx+1,y ∨ Wx-1,y)
W1,1 ∨ W1,2 ∨ … ∨ W4,4
¬W1,1 ∨ ¬W1,2
¬W1,1 ∨ ¬W1,3
…
⇒ 64 distinct proposition symbols, 155 sentences
»
• KB contains "physics" sentences for every single square
• For every time t and every location [x,y],
Lx,y ∧ FacingRightt
∧ Forwardt
⇒ Lx+1,y
• Rapid proliferation of clauses
•
•
Expressiveness limitation of
propositional logic
tt
Summary
• Logical agents apply inference to a knowledge base to derive new
information and make decisions
• Basic concepts of logic:
– syntax: formal structure of sentences
– semantics: truth of sentences wrt models
– entailment: necessary truth of one sentence given another
– inference: deriving sentences from other sentences
– soundness: derivations produce only entailed sentences
– completeness: derivations can produce all entailed sentences
• Wumpus world requires the ability to represent partial and negated
information, reason by cases, etc.
• Resolution is complete for propositional logic
Forward, backward chaining are linear-time, complete for Horn
clauses
• Propositional logic lacks expressive power
•
»

Weitere ähnliche Inhalte

Was ist angesagt?

Heuristc Search Techniques
Heuristc Search TechniquesHeuristc Search Techniques
Heuristc Search TechniquesJismy .K.Jose
 
Production system in ai
Production system in aiProduction system in ai
Production system in aisabin kafle
 
Lecture 06 production system
Lecture 06 production systemLecture 06 production system
Lecture 06 production systemHema Kashyap
 
Unification and Lifting
Unification and LiftingUnification and Lifting
Unification and LiftingMegha Sharma
 
AI 7 | Constraint Satisfaction Problem
AI 7 | Constraint Satisfaction ProblemAI 7 | Constraint Satisfaction Problem
AI 7 | Constraint Satisfaction ProblemMohammad Imam Hossain
 
Artificial Intelligence -- Search Algorithms
Artificial Intelligence-- Search Algorithms Artificial Intelligence-- Search Algorithms
Artificial Intelligence -- Search Algorithms Syed Ahmed
 
Game Playing in Artificial Intelligence
Game Playing in Artificial IntelligenceGame Playing in Artificial Intelligence
Game Playing in Artificial Intelligencelordmwesh
 
Artificial Intelligence Notes Unit 1
Artificial Intelligence Notes Unit 1 Artificial Intelligence Notes Unit 1
Artificial Intelligence Notes Unit 1 DigiGurukul
 
AI_Session 7 Greedy Best first search algorithm.pptx
AI_Session 7 Greedy Best first search algorithm.pptxAI_Session 7 Greedy Best first search algorithm.pptx
AI_Session 7 Greedy Best first search algorithm.pptxAsst.prof M.Gokilavani
 
Heuristic search-in-artificial-intelligence
Heuristic search-in-artificial-intelligenceHeuristic search-in-artificial-intelligence
Heuristic search-in-artificial-intelligencegrinu
 
BackTracking Algorithm: Technique and Examples
BackTracking Algorithm: Technique and ExamplesBackTracking Algorithm: Technique and Examples
BackTracking Algorithm: Technique and ExamplesFahim Ferdous
 
The n Queen Problem
The n Queen ProblemThe n Queen Problem
The n Queen ProblemSukrit Gupta
 
Lecture 16 memory bounded search
Lecture 16 memory bounded searchLecture 16 memory bounded search
Lecture 16 memory bounded searchHema Kashyap
 
Uninformed search /Blind search in AI
Uninformed search /Blind search in AIUninformed search /Blind search in AI
Uninformed search /Blind search in AIKirti Verma
 

Was ist angesagt? (20)

Problem Solving
Problem Solving Problem Solving
Problem Solving
 
Heuristc Search Techniques
Heuristc Search TechniquesHeuristc Search Techniques
Heuristc Search Techniques
 
Production system in ai
Production system in aiProduction system in ai
Production system in ai
 
AI Lecture 3 (solving problems by searching)
AI Lecture 3 (solving problems by searching)AI Lecture 3 (solving problems by searching)
AI Lecture 3 (solving problems by searching)
 
Lecture 06 production system
Lecture 06 production systemLecture 06 production system
Lecture 06 production system
 
Hill climbing
Hill climbingHill climbing
Hill climbing
 
Unification and Lifting
Unification and LiftingUnification and Lifting
Unification and Lifting
 
AI 7 | Constraint Satisfaction Problem
AI 7 | Constraint Satisfaction ProblemAI 7 | Constraint Satisfaction Problem
AI 7 | Constraint Satisfaction Problem
 
Informed search
Informed searchInformed search
Informed search
 
Artificial Intelligence -- Search Algorithms
Artificial Intelligence-- Search Algorithms Artificial Intelligence-- Search Algorithms
Artificial Intelligence -- Search Algorithms
 
Game Playing in Artificial Intelligence
Game Playing in Artificial IntelligenceGame Playing in Artificial Intelligence
Game Playing in Artificial Intelligence
 
5 csp
5 csp5 csp
5 csp
 
Artificial Intelligence Notes Unit 1
Artificial Intelligence Notes Unit 1 Artificial Intelligence Notes Unit 1
Artificial Intelligence Notes Unit 1
 
Hill climbing algorithm
Hill climbing algorithmHill climbing algorithm
Hill climbing algorithm
 
AI_Session 7 Greedy Best first search algorithm.pptx
AI_Session 7 Greedy Best first search algorithm.pptxAI_Session 7 Greedy Best first search algorithm.pptx
AI_Session 7 Greedy Best first search algorithm.pptx
 
Heuristic search-in-artificial-intelligence
Heuristic search-in-artificial-intelligenceHeuristic search-in-artificial-intelligence
Heuristic search-in-artificial-intelligence
 
BackTracking Algorithm: Technique and Examples
BackTracking Algorithm: Technique and ExamplesBackTracking Algorithm: Technique and Examples
BackTracking Algorithm: Technique and Examples
 
The n Queen Problem
The n Queen ProblemThe n Queen Problem
The n Queen Problem
 
Lecture 16 memory bounded search
Lecture 16 memory bounded searchLecture 16 memory bounded search
Lecture 16 memory bounded search
 
Uninformed search /Blind search in AI
Uninformed search /Blind search in AIUninformed search /Blind search in AI
Uninformed search /Blind search in AI
 

Andere mochten auch

Jarrar.lecture notes.aai.2011s.ch7.p logic
Jarrar.lecture notes.aai.2011s.ch7.p logicJarrar.lecture notes.aai.2011s.ch7.p logic
Jarrar.lecture notes.aai.2011s.ch7.p logicPalGov
 
Knowledge engg using & in fol
Knowledge engg using & in folKnowledge engg using & in fol
Knowledge engg using & in folchandsek666
 
Class first order logic
Class first order logicClass first order logic
Class first order logicchandsek666
 
Logical Agents
Logical AgentsLogical Agents
Logical AgentsYasir Khan
 
Instance based learning
Instance based learningInstance based learning
Instance based learningSlideshare
 
What is in you
What is in youWhat is in you
What is in youSlideshare
 
Книги-юбиляры 2013 года
Книги-юбиляры 2013 годаКниги-юбиляры 2013 года
Книги-юбиляры 2013 годаnikola511
 
Resolution(decision)
Resolution(decision)Resolution(decision)
Resolution(decision)Slideshare
 
Report generation
Report generationReport generation
Report generationSlideshare
 
16 Queens Problem - trial 1
16 Queens Problem  - trial 116 Queens Problem  - trial 1
16 Queens Problem - trial 1Slideshare
 
#3 formal methods – propositional logic
#3 formal methods – propositional logic#3 formal methods – propositional logic
#3 formal methods – propositional logicSharif Omar Salem
 
Security in Relational model
Security in Relational modelSecurity in Relational model
Security in Relational modelSlideshare
 
Propositional logic for Beginners
Propositional logic for BeginnersPropositional logic for Beginners
Propositional logic for Beginnerskianryan
 
Neural networks
Neural networksNeural networks
Neural networksSlideshare
 
Propositional logic
Propositional logicPropositional logic
Propositional logicRushdi Shams
 
Resolution of company
Resolution of companyResolution of company
Resolution of companyAdeel Akram
 
Data preprocessing
Data preprocessingData preprocessing
Data preprocessingSlideshare
 
Crystal report generation in visual studio 2010
Crystal report generation in visual studio 2010Crystal report generation in visual studio 2010
Crystal report generation in visual studio 2010Slideshare
 
Statistical learning
Statistical learningStatistical learning
Statistical learningSlideshare
 

Andere mochten auch (20)

Jarrar.lecture notes.aai.2011s.ch7.p logic
Jarrar.lecture notes.aai.2011s.ch7.p logicJarrar.lecture notes.aai.2011s.ch7.p logic
Jarrar.lecture notes.aai.2011s.ch7.p logic
 
Knowledge engg using & in fol
Knowledge engg using & in folKnowledge engg using & in fol
Knowledge engg using & in fol
 
Class first order logic
Class first order logicClass first order logic
Class first order logic
 
Fol
FolFol
Fol
 
Logical Agents
Logical AgentsLogical Agents
Logical Agents
 
Instance based learning
Instance based learningInstance based learning
Instance based learning
 
What is in you
What is in youWhat is in you
What is in you
 
Книги-юбиляры 2013 года
Книги-юбиляры 2013 годаКниги-юбиляры 2013 года
Книги-юбиляры 2013 года
 
Resolution(decision)
Resolution(decision)Resolution(decision)
Resolution(decision)
 
Report generation
Report generationReport generation
Report generation
 
16 Queens Problem - trial 1
16 Queens Problem  - trial 116 Queens Problem  - trial 1
16 Queens Problem - trial 1
 
#3 formal methods – propositional logic
#3 formal methods – propositional logic#3 formal methods – propositional logic
#3 formal methods – propositional logic
 
Security in Relational model
Security in Relational modelSecurity in Relational model
Security in Relational model
 
Propositional logic for Beginners
Propositional logic for BeginnersPropositional logic for Beginners
Propositional logic for Beginners
 
Neural networks
Neural networksNeural networks
Neural networks
 
Propositional logic
Propositional logicPropositional logic
Propositional logic
 
Resolution of company
Resolution of companyResolution of company
Resolution of company
 
Data preprocessing
Data preprocessingData preprocessing
Data preprocessing
 
Crystal report generation in visual studio 2010
Crystal report generation in visual studio 2010Crystal report generation in visual studio 2010
Crystal report generation in visual studio 2010
 
Statistical learning
Statistical learningStatistical learning
Statistical learning
 

Ähnlich wie Logic agent

Ähnlich wie Logic agent (20)

AI-Unit4.ppt
AI-Unit4.pptAI-Unit4.ppt
AI-Unit4.ppt
 
m7-logic.ppt
m7-logic.pptm7-logic.ppt
m7-logic.ppt
 
Knowledge based agent
Knowledge based agentKnowledge based agent
Knowledge based agent
 
Lecture 4 representation with logic
Lecture 4   representation with logicLecture 4   representation with logic
Lecture 4 representation with logic
 
10a.ppt
10a.ppt10a.ppt
10a.ppt
 
Top school in delhi ncr
Top school in delhi ncrTop school in delhi ncr
Top school in delhi ncr
 
Logic
LogicLogic
Logic
 
Logic.ppt
Logic.pptLogic.ppt
Logic.ppt
 
Logic
LogicLogic
Logic
 
l4.pptx
l4.pptxl4.pptx
l4.pptx
 
PropositionalLogic.ppt
PropositionalLogic.pptPropositionalLogic.ppt
PropositionalLogic.ppt
 
2020CSC4331_Lecture6_1.pdf
2020CSC4331_Lecture6_1.pdf2020CSC4331_Lecture6_1.pdf
2020CSC4331_Lecture6_1.pdf
 
PropositionalLogic.ppt
PropositionalLogic.pptPropositionalLogic.ppt
PropositionalLogic.ppt
 
Propositional logic & inference
Propositional logic & inferencePropositional logic & inference
Propositional logic & inference
 
Unit III Knowledge Representation in AI K.Sundar,AP/CSE,VEC
Unit III  Knowledge Representation in AI   K.Sundar,AP/CSE,VECUnit III  Knowledge Representation in AI   K.Sundar,AP/CSE,VEC
Unit III Knowledge Representation in AI K.Sundar,AP/CSE,VEC
 
PNP.pptx
PNP.pptxPNP.pptx
PNP.pptx
 
PNP.pptx
PNP.pptxPNP.pptx
PNP.pptx
 
Lecture 01.ppt
Lecture 01.pptLecture 01.ppt
Lecture 01.ppt
 
Introduction to Logic Spring 2007 Introduction to Discrete Structures.ppt
Introduction to Logic Spring 2007 Introduction to Discrete Structures.pptIntroduction to Logic Spring 2007 Introduction to Discrete Structures.ppt
Introduction to Logic Spring 2007 Introduction to Discrete Structures.ppt
 
Introduction iii
Introduction iiiIntroduction iii
Introduction iii
 

Mehr von Slideshare

Entity Relationship Model
Entity Relationship ModelEntity Relationship Model
Entity Relationship ModelSlideshare
 
Major issues in data mining
Major issues in data miningMajor issues in data mining
Major issues in data miningSlideshare
 
Logical reasoning 21.1.13
Logical reasoning 21.1.13Logical reasoning 21.1.13
Logical reasoning 21.1.13Slideshare
 
Statistical learning
Statistical learningStatistical learning
Statistical learningSlideshare
 
Reinforcement learning 7313
Reinforcement learning 7313Reinforcement learning 7313
Reinforcement learning 7313Slideshare
 
Neural networks
Neural networksNeural networks
Neural networksSlideshare
 
Logical reasoning
Logical reasoning Logical reasoning
Logical reasoning Slideshare
 
Instance based learning
Instance based learningInstance based learning
Instance based learningSlideshare
 
Input & output devices
Input & output devicesInput & output devices
Input & output devicesSlideshare
 
Accessing I/O Devices
Accessing I/O DevicesAccessing I/O Devices
Accessing I/O DevicesSlideshare
 
16 queens problem - trial 2
16 queens problem - trial 216 queens problem - trial 2
16 queens problem - trial 2Slideshare
 
Basic Processing Unit
Basic Processing UnitBasic Processing Unit
Basic Processing UnitSlideshare
 
Cache performance considerations
Cache performance considerationsCache performance considerations
Cache performance considerationsSlideshare
 
Memory management
Memory managementMemory management
Memory managementSlideshare
 
Secondary storage devices
Secondary storage devices Secondary storage devices
Secondary storage devices Slideshare
 
Magnetic tape system
Magnetic tape systemMagnetic tape system
Magnetic tape systemSlideshare
 

Mehr von Slideshare (19)

Trigger
TriggerTrigger
Trigger
 
Entity Relationship Model
Entity Relationship ModelEntity Relationship Model
Entity Relationship Model
 
OLAP
OLAPOLAP
OLAP
 
Major issues in data mining
Major issues in data miningMajor issues in data mining
Major issues in data mining
 
Logical reasoning 21.1.13
Logical reasoning 21.1.13Logical reasoning 21.1.13
Logical reasoning 21.1.13
 
Statistical learning
Statistical learningStatistical learning
Statistical learning
 
Reinforcement learning 7313
Reinforcement learning 7313Reinforcement learning 7313
Reinforcement learning 7313
 
Neural networks
Neural networksNeural networks
Neural networks
 
Logical reasoning
Logical reasoning Logical reasoning
Logical reasoning
 
Instance based learning
Instance based learningInstance based learning
Instance based learning
 
Input & output devices
Input & output devicesInput & output devices
Input & output devices
 
Accessing I/O Devices
Accessing I/O DevicesAccessing I/O Devices
Accessing I/O Devices
 
16 queens problem - trial 2
16 queens problem - trial 216 queens problem - trial 2
16 queens problem - trial 2
 
Basic Processing Unit
Basic Processing UnitBasic Processing Unit
Basic Processing Unit
 
Cache performance considerations
Cache performance considerationsCache performance considerations
Cache performance considerations
 
Cachememory
CachememoryCachememory
Cachememory
 
Memory management
Memory managementMemory management
Memory management
 
Secondary storage devices
Secondary storage devices Secondary storage devices
Secondary storage devices
 
Magnetic tape system
Magnetic tape systemMagnetic tape system
Magnetic tape system
 

Kürzlich hochgeladen

An Overview of Mutual Funds Bcom Project.pdf
An Overview of Mutual Funds Bcom Project.pdfAn Overview of Mutual Funds Bcom Project.pdf
An Overview of Mutual Funds Bcom Project.pdfSanaAli374401
 
Activity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdfActivity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdfciinovamais
 
Ecological Succession. ( ECOSYSTEM, B. Pharmacy, 1st Year, Sem-II, Environmen...
Ecological Succession. ( ECOSYSTEM, B. Pharmacy, 1st Year, Sem-II, Environmen...Ecological Succession. ( ECOSYSTEM, B. Pharmacy, 1st Year, Sem-II, Environmen...
Ecological Succession. ( ECOSYSTEM, B. Pharmacy, 1st Year, Sem-II, Environmen...Shubhangi Sonawane
 
Making and Justifying Mathematical Decisions.pdf
Making and Justifying Mathematical Decisions.pdfMaking and Justifying Mathematical Decisions.pdf
Making and Justifying Mathematical Decisions.pdfChris Hunter
 
SECOND SEMESTER TOPIC COVERAGE SY 2023-2024 Trends, Networks, and Critical Th...
SECOND SEMESTER TOPIC COVERAGE SY 2023-2024 Trends, Networks, and Critical Th...SECOND SEMESTER TOPIC COVERAGE SY 2023-2024 Trends, Networks, and Critical Th...
SECOND SEMESTER TOPIC COVERAGE SY 2023-2024 Trends, Networks, and Critical Th...KokoStevan
 
Accessible design: Minimum effort, maximum impact
Accessible design: Minimum effort, maximum impactAccessible design: Minimum effort, maximum impact
Accessible design: Minimum effort, maximum impactdawncurless
 
Application orientated numerical on hev.ppt
Application orientated numerical on hev.pptApplication orientated numerical on hev.ppt
Application orientated numerical on hev.pptRamjanShidvankar
 
Nutritional Needs Presentation - HLTH 104
Nutritional Needs Presentation - HLTH 104Nutritional Needs Presentation - HLTH 104
Nutritional Needs Presentation - HLTH 104misteraugie
 
This PowerPoint helps students to consider the concept of infinity.
This PowerPoint helps students to consider the concept of infinity.This PowerPoint helps students to consider the concept of infinity.
This PowerPoint helps students to consider the concept of infinity.christianmathematics
 
Beyond the EU: DORA and NIS 2 Directive's Global Impact
Beyond the EU: DORA and NIS 2 Directive's Global ImpactBeyond the EU: DORA and NIS 2 Directive's Global Impact
Beyond the EU: DORA and NIS 2 Directive's Global ImpactPECB
 
Sports & Fitness Value Added Course FY..
Sports & Fitness Value Added Course FY..Sports & Fitness Value Added Course FY..
Sports & Fitness Value Added Course FY..Disha Kariya
 
Z Score,T Score, Percential Rank and Box Plot Graph
Z Score,T Score, Percential Rank and Box Plot GraphZ Score,T Score, Percential Rank and Box Plot Graph
Z Score,T Score, Percential Rank and Box Plot GraphThiyagu K
 
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptxSOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptxiammrhaywood
 
Paris 2024 Olympic Geographies - an activity
Paris 2024 Olympic Geographies - an activityParis 2024 Olympic Geographies - an activity
Paris 2024 Olympic Geographies - an activityGeoBlogs
 
Measures of Central Tendency: Mean, Median and Mode
Measures of Central Tendency: Mean, Median and ModeMeasures of Central Tendency: Mean, Median and Mode
Measures of Central Tendency: Mean, Median and ModeThiyagu K
 
Holdier Curriculum Vitae (April 2024).pdf
Holdier Curriculum Vitae (April 2024).pdfHoldier Curriculum Vitae (April 2024).pdf
Holdier Curriculum Vitae (April 2024).pdfagholdier
 
1029 - Danh muc Sach Giao Khoa 10 . pdf
1029 -  Danh muc Sach Giao Khoa 10 . pdf1029 -  Danh muc Sach Giao Khoa 10 . pdf
1029 - Danh muc Sach Giao Khoa 10 . pdfQucHHunhnh
 
The basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptxThe basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptxheathfieldcps1
 
1029-Danh muc Sach Giao Khoa khoi 6.pdf
1029-Danh muc Sach Giao Khoa khoi  6.pdf1029-Danh muc Sach Giao Khoa khoi  6.pdf
1029-Danh muc Sach Giao Khoa khoi 6.pdfQucHHunhnh
 

Kürzlich hochgeladen (20)

An Overview of Mutual Funds Bcom Project.pdf
An Overview of Mutual Funds Bcom Project.pdfAn Overview of Mutual Funds Bcom Project.pdf
An Overview of Mutual Funds Bcom Project.pdf
 
Activity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdfActivity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdf
 
Ecological Succession. ( ECOSYSTEM, B. Pharmacy, 1st Year, Sem-II, Environmen...
Ecological Succession. ( ECOSYSTEM, B. Pharmacy, 1st Year, Sem-II, Environmen...Ecological Succession. ( ECOSYSTEM, B. Pharmacy, 1st Year, Sem-II, Environmen...
Ecological Succession. ( ECOSYSTEM, B. Pharmacy, 1st Year, Sem-II, Environmen...
 
Making and Justifying Mathematical Decisions.pdf
Making and Justifying Mathematical Decisions.pdfMaking and Justifying Mathematical Decisions.pdf
Making and Justifying Mathematical Decisions.pdf
 
SECOND SEMESTER TOPIC COVERAGE SY 2023-2024 Trends, Networks, and Critical Th...
SECOND SEMESTER TOPIC COVERAGE SY 2023-2024 Trends, Networks, and Critical Th...SECOND SEMESTER TOPIC COVERAGE SY 2023-2024 Trends, Networks, and Critical Th...
SECOND SEMESTER TOPIC COVERAGE SY 2023-2024 Trends, Networks, and Critical Th...
 
Accessible design: Minimum effort, maximum impact
Accessible design: Minimum effort, maximum impactAccessible design: Minimum effort, maximum impact
Accessible design: Minimum effort, maximum impact
 
Application orientated numerical on hev.ppt
Application orientated numerical on hev.pptApplication orientated numerical on hev.ppt
Application orientated numerical on hev.ppt
 
Nutritional Needs Presentation - HLTH 104
Nutritional Needs Presentation - HLTH 104Nutritional Needs Presentation - HLTH 104
Nutritional Needs Presentation - HLTH 104
 
This PowerPoint helps students to consider the concept of infinity.
This PowerPoint helps students to consider the concept of infinity.This PowerPoint helps students to consider the concept of infinity.
This PowerPoint helps students to consider the concept of infinity.
 
Beyond the EU: DORA and NIS 2 Directive's Global Impact
Beyond the EU: DORA and NIS 2 Directive's Global ImpactBeyond the EU: DORA and NIS 2 Directive's Global Impact
Beyond the EU: DORA and NIS 2 Directive's Global Impact
 
Sports & Fitness Value Added Course FY..
Sports & Fitness Value Added Course FY..Sports & Fitness Value Added Course FY..
Sports & Fitness Value Added Course FY..
 
Z Score,T Score, Percential Rank and Box Plot Graph
Z Score,T Score, Percential Rank and Box Plot GraphZ Score,T Score, Percential Rank and Box Plot Graph
Z Score,T Score, Percential Rank and Box Plot Graph
 
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptxSOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
 
Código Creativo y Arte de Software | Unidad 1
Código Creativo y Arte de Software | Unidad 1Código Creativo y Arte de Software | Unidad 1
Código Creativo y Arte de Software | Unidad 1
 
Paris 2024 Olympic Geographies - an activity
Paris 2024 Olympic Geographies - an activityParis 2024 Olympic Geographies - an activity
Paris 2024 Olympic Geographies - an activity
 
Measures of Central Tendency: Mean, Median and Mode
Measures of Central Tendency: Mean, Median and ModeMeasures of Central Tendency: Mean, Median and Mode
Measures of Central Tendency: Mean, Median and Mode
 
Holdier Curriculum Vitae (April 2024).pdf
Holdier Curriculum Vitae (April 2024).pdfHoldier Curriculum Vitae (April 2024).pdf
Holdier Curriculum Vitae (April 2024).pdf
 
1029 - Danh muc Sach Giao Khoa 10 . pdf
1029 -  Danh muc Sach Giao Khoa 10 . pdf1029 -  Danh muc Sach Giao Khoa 10 . pdf
1029 - Danh muc Sach Giao Khoa 10 . pdf
 
The basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptxThe basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptx
 
1029-Danh muc Sach Giao Khoa khoi 6.pdf
1029-Danh muc Sach Giao Khoa khoi  6.pdf1029-Danh muc Sach Giao Khoa khoi  6.pdf
1029-Danh muc Sach Giao Khoa khoi 6.pdf
 

Logic agent

  • 1. Logical Agents V.Saranya AP/CSE Sri Vidya College of Engineering and Technology, Virudhunagar
  • 2. Outline • Knowledge-based agents • Wumpus world • Logic in general - models and entailment • Propositional (Boolean) logic • Equivalence, validity, satisfiability • Inference rules and theorem proving – forward chaining – backward chaining – resolution –
  • 3. Knowledge bases • Knowledge base = set of sentences in a formal language • Declarative approach to building an agent (or other system): – Tell it what it needs to know • Then it can Ask itself what to do - answers should follow from the KB • Agents can be viewed at the knowledge level i.e., what they know, regardless of how implemented • Or at the implementation level – i.e., data structures in KB and algorithms that manipulate them – –
  • 4. A simple knowledge-based agent • The agent must be able to: – Represent states, actions, etc. – Incorporate new percepts – Update internal representations of the world – Deduce hidden properties of the world – Deduce appropriate actions –
  • 5. Wumpus World PEAS description • Performance measure – gold +1000, death -1000 – -1 per step, -10 for using the arrow • Environment – Squares adjacent to wumpus are smelly – Squares adjacent to pit are breezy – Glitter iff gold is in the same square – Shooting kills wumpus if you are facing it – Shooting uses up the only arrow – Grabbing picks up gold if in same square – Releasing drops the gold in same square • Sensors: Stench, Breeze, Glitter, Bump, Scream • Actuators: Left turn, Right turn, Forward, Grab, Release, Shoot
  • 6. Wumpus world characterization • Fully Observable No – only local perception • Deterministic Yes – outcomes exactly specified • Episodic No – sequential at the level of actions • Static Yes – Wumpus and Pits do not move • Discrete Yes • Single-agent? Yes – Wumpus is essentially a natural feature • • •
  • 15. Logic in general • Logics are formal languages for representing information such that conclusions can be drawn • Syntax defines the sentences in the language • Semantics define the "meaning" of sentences; – i.e., define truth of a sentence in a world • E.g., the language of arithmetic – x+2 ≥ y is a sentence; x2+y > {} is not a sentence – x+2 ≥ y is true iff the number x+2 is no less than the number y – x+2 ≥ y is true in a world where x = 7, y = 1 – x+2 ≥ y is false in a world where x = 0, y = 6 – –
  • 16. Entailment • Entailment means that one thing follows from another: KB ╞ α • Knowledge base KB entails sentence α if and only if α is true in all worlds where KB is true – E.g., the KB containing “the Giants won” and “the Reds won” entails “Either the Giants won or the Reds won” – E.g., x+y = 4 entails 4 = x+y – Entailment is a relationship between sentences (i.e., syntax) that is based on semantics – –
  • 17. Models • Logicians typically think in terms of models, which are formally structured worlds with respect to which truth can be evaluated • We say m is a model of a sentence α if α is true in m • M(α) is the set of all models of α • Then KB ╞ α iff M(KB) ⊆ M(α) – E.g. KB = Giants won and Reds won α = Giants won – • • •
  • 18. Entailment in the wumpus world Situation after detecting nothing in [1,1], moving right, breeze in [2,1] Consider possible models for KB assuming only pits 3 Boolean choices ⇒ 8 possible models
  • 20. Wumpus models • KB = wumpus-world rules + observations •
  • 21. Wumpus models • KB = wumpus-world rules + observations • α1 = "[1,2] is safe", KB ╞ α1, proved by model checking •
  • 22. Wumpus models • KB = wumpus-world rules + observations
  • 23. Wumpus models • KB = wumpus-world rules + observations • α2 = "[2,2] is safe", KB ╞ α2 •
  • 24. Inference • KB ├i α = sentence α can be derived from KB by procedure i • Soundness: i is sound if whenever KB ├i α, it is also true that KB╞ α • Completeness: i is complete if whenever KB╞ α, it is also true that KB ├i α • Preview: we will define a logic (first-order logic) which is expressive enough to say almost anything of interest, and for which there exists a sound and complete inference procedure. • That is, the procedure will answer any question whose answer follows from what is known by the KB. •
  • 25. Propositional logic: Syntax • Propositional logic is the simplest logic – illustrates basic ideas • The proposition symbols P1, P2 etc are sentences – If S is a sentence, ¬S is a sentence (negation) – If S1 and S2 are sentences, S1 ∧ S2 is a sentence (conjunction) – If S1 and S2 are sentences, S1 ∨ S2 is a sentence (disjunction) – If S1 and S2 are sentences, S1 ⇒ S2 is a sentence (implication) – If S1 and S2 are sentences, S1 ⇔ S2 is a sentence (biconditional) – – –
  • 26. Propositional logic: Semantics Each model specifies true/false for each proposition symbol E.g. P1,2 P2,2 P3,1 false true false With these symbols, 8 possible models, can be enumerated automatically. Rules for evaluating truth with respect to a model m: ¬S is true iff S is false S1 ∧ S2 is true iff S1 is true and S2 is true S1 ∨ S2 is true iff S1is true or S2 is true S1 ⇒ S2 is true iff S1 is false or S2 is true i.e., is false iff S1 is true and S2 is false S1 ⇔ S2 is true iff S1⇒S2 is true andS2⇒S1 is true Simple recursive process evaluates an arbitrary sentence, e.g., ¬P1,2 ∧ (P2,2 ∨P3,1) = true ∧ (true ∨ false) = true ∧ true = true
  • 27. Truth tables for connectives
  • 28. Wumpus world sentences Let Pi,j be true if there is a pit in [i, j]. Let Bi,j be true if there is a breeze in [i, j]. ¬ P1,1 ¬B1,1 B2,1 • "Pits cause breezes in adjacent squares" B1,1 ⇔ (P1,2 ∨ P2,1) B2,1 ⇔ (P1,1 ∨ P2,2 ∨ P3,1) »
  • 29. Truth tables for inference
  • 30. Inference by enumeration • Depth-first enumeration of all models is sound and complete • For n symbols, time complexity is O(2n ), space complexity is O(n) • •
  • 31. Logical equivalence • Two sentences are logically equivalent} iff true in same models: α ≡ ß iff α╞ β and β╞ α • •
  • 32. Validity and satisfiability A sentence is valid if it is true in all models, e.g., True, A ∨¬A, A ⇒ A, (A ∧ (A ⇒ B)) ⇒ B Validity is connected to inference via the Deduction Theorem: KB ╞ α if and only if (KB ⇒ α) is valid A sentence is satisfiable if it is true in some model e.g., A∨ B, C A sentence is unsatisfiable if it is true in no models e.g., A∧¬A Satisfiability is connected to inference via the following: KB ╞ α if and only if (KB ∧¬α) is unsatisfiable – –
  • 33. Proof methods • Proof methods divide into (roughly) two kinds: – Application of inference rules • Legitimate (sound) generation of new sentences from old • Proof = a sequence of inference rule applications Can use inference rules as operators in a standard search algorithm • Typically require transformation of sentences into a normal form – Model checking • truth table enumeration (always exponential in n) • improved backtracking, e.g., Davis--Putnam-Logemann-Loveland (DPLL) • heuristic search in model space (sound but incomplete) e.g., min-conflicts-like hill-climbing algorithms • •
  • 34. Resolution Conjunctive Normal Form (CNF) conjunction of disjunctions of literals clauses E.g., (A ∨ ¬B) ∧ (B ∨ ¬C ∨ ¬D) • Resolution inference rule (for CNF): li ∨… ∨ lk, m1 ∨ … ∨ mn li ∨ … ∨ li-1 ∨li+1 ∨ … ∨ lk ∨ m1 ∨ … ∨ mj-1 ∨ mj+1 ∨... ∨ mn where li and mj are complementary literals. E.g., P1,3 ∨ P2,2, ¬P2,2 P1,3 • Resolution is sound and complete for propositional logic »
  • 35. Resolution Soundness of resolution inference rule: ¬(li ∨ … ∨ li-1 ∨li+1 ∨ … ∨ lk) ⇒ li ¬mj ⇒ (m1 ∨ … ∨ mj-1 ∨ mj+1 ∨... ∨ mn) ¬(li ∨ … ∨ li-1 ∨li+1 ∨ … ∨ lk) ⇒ (m1 ∨ … ∨ mj-1 ∨ mj+1 ∨... ∨ mn)
  • 36. Conversion to CNF B1,1 ⇔ (P1,2 ∨ P2,1)β 1. Eliminate ⇔, replacing α ⇔ β with (α ⇒ β)∧(β ⇒ α). (B1,1 ⇒ (P1,2 ∨ P2,1)) ∧ ((P1,2 ∨ P2,1) ⇒ B1,1) 2. Eliminate ⇒, replacing α ⇒ β with ¬α∨ β. (¬B1,1 ∨ P1,2 ∨ P2,1) ∧ (¬(P1,2 ∨ P2,1) ∨ B1,1) 3. Move ¬ inwards using de Morgan's rules and double- negation: (¬B1,1 ∨ P1,2 ∨ P2,1) ∧ ((¬P1,2 ∨ ¬P2,1) ∨ B1,1) 4. Apply distributivity law (∧ over ∨) and flatten: (¬B1,1 ∨ P1,2 ∨ P2,1) ∧ (¬P1,2 ∨ B1,1) ∧ (¬P2,1 ∨ B1,1) –
  • 37. Resolution algorithm • Proof by contradiction, i.e., show KB∧¬α unsatisfiable •
  • 38. Resolution example • KB = (B1,1 ⇔ (P1,2∨ P2,1)) ∧¬ B1,1 α = ¬P1,2 •
  • 39. Forward and backward chaining • Horn Form (restricted) KB = conjunction of Horn clauses – Horn clause = • proposition symbol; or • (conjunction of symbols) ⇒ symbol – E.g., C ∧ (B ⇒ A) ∧ (C ∧ D ⇒ B) • Modus Ponens (for Horn Form): complete for Horn KBs α1, … ,αn, α1 ∧ … ∧ αn ⇒ β β • Can be used with forward chaining or backward chaining. • These algorithms are very natural and run in linear time • • »
  • 40. Forward chaining • Idea: fire any rule whose premises are satisfied in the KB, – add its conclusion to the KB, until query is found
  • 41. Forward chaining algorithm • Forward chaining is sound and complete for Horn KB •
  • 50. Proof of completeness • FC derives every atomic sentence that is entailed by KB 1. FC reaches a fixed point where no new atomic sentences are derived 2. Consider the final state as a model m, assigning true/false to symbols 3. Every clause in the original KB is true in m a1 ∧ … ∧ ak ⇒ b 1. Hence m is a model of KB 2. If KB╞ q, q is true in every model of KB, including m 3. – •
  • 51. Backward chaining Idea: work backwards from the query q: to prove q by BC, check if q is known already, or prove by BC all premises of some rule concluding q Avoid loops: check if new subgoal is already on the goal stack Avoid repeated work: check if new subgoal 1. has already been proved true, or 2. has already failed 3. –
  • 62. Forward vs. backward chaining • FC is data-driven, automatic, unconscious processing, – e.g., object recognition, routine decisions • May do lots of work that is irrelevant to the goal • BC is goal-driven, appropriate for problem-solving, – e.g., Where are my keys? How do I get into a PhD program? • Complexity of BC can be much less than linear in size of KB » » –
  • 63. Efficient propositional inference Two families of efficient algorithms for propositional inference: Complete backtracking search algorithms • DPLL algorithm (Davis, Putnam, Logemann, Loveland) • Incomplete local search algorithms – WalkSAT algorithm – •
  • 64. The DPLL algorithm Determine if an input propositional logic sentence (in CNF) is satisfiable. Improvements over truth table enumeration: 1. Early termination A clause is true if any literal is true. A sentence is false if any clause is false. 1. Pure symbol heuristic Pure symbol: always appears with the same "sign" in all clauses. e.g., In the three clauses (A ∨ ¬B), (¬B ∨ ¬C), (C ∨ A), A and B are pure, C is impure. Make a pure symbol literal true. 1. Unit clause heuristic Unit clause: only one literal in the clause The only literal in a unit clause must be true.
  • 66. The WalkSAT algorithm • Incomplete, local search algorithm • Evaluation function: The min-conflict heuristic of minimizing the number of unsatisfied clauses • Balance between greediness and randomness • • •
  • 68. Hard satisfiability problems • Consider random 3-CNF sentences. e.g., (¬D ∨ ¬B ∨ C) ∧ (B ∨ ¬A ∨ ¬C) ∧ (¬C ∨ ¬B ∨ E) ∧ (E ∨ ¬D ∨ B) ∧ (B ∨ E ∨ ¬C) n = number of symbols –Hard problems seem to cluster near m/n = 4.3 (critical point) – • m = number of clauses •
  • 70. Hard satisfiability problems • Median runtime for 100 satisfiable random 3- CNF sentences, n = 50 •
  • 71. Inference-based agents in the wumpus world A wumpus-world agent using propositional logic: ¬P1,1 ¬W1,1 Bx,y ⇔ (Px,y+1 ∨ Px,y-1 ∨ Px+1,y ∨ Px-1,y) Sx,y ⇔ (Wx,y+1 ∨ Wx,y-1 ∨ Wx+1,y ∨ Wx-1,y) W1,1 ∨ W1,2 ∨ … ∨ W4,4 ¬W1,1 ∨ ¬W1,2 ¬W1,1 ∨ ¬W1,3 … ⇒ 64 distinct proposition symbols, 155 sentences »
  • 72.
  • 73. • KB contains "physics" sentences for every single square • For every time t and every location [x,y], Lx,y ∧ FacingRightt ∧ Forwardt ⇒ Lx+1,y • Rapid proliferation of clauses • • Expressiveness limitation of propositional logic tt
  • 74. Summary • Logical agents apply inference to a knowledge base to derive new information and make decisions • Basic concepts of logic: – syntax: formal structure of sentences – semantics: truth of sentences wrt models – entailment: necessary truth of one sentence given another – inference: deriving sentences from other sentences – soundness: derivations produce only entailed sentences – completeness: derivations can produce all entailed sentences • Wumpus world requires the ability to represent partial and negated information, reason by cases, etc. • Resolution is complete for propositional logic Forward, backward chaining are linear-time, complete for Horn clauses • Propositional logic lacks expressive power • »