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Logic

Logic. CPSC 386 Artificial Intelligence Ellen Walker Hiram College. Knowledge Based Agents. Representation How is the knowledge stored by the agent? Procedural vs. Declarative Reasoning How is the knowledge used… To solve a problem? To generate more knowledge? Generic Functions

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Logic

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  1. Logic CPSC 386 Artificial Intelligence Ellen Walker Hiram College

  2. Knowledge Based Agents • Representation • How is the knowledge stored by the agent? • Procedural vs. Declarative • Reasoning • How is the knowledge used… • To solve a problem? • To generate more knowledge? • Generic Functions • TELL (add a fact to the knowledge base) • ASK (get next action based on info in KB)

  3. Hunt the Wumpus • Game is played in a MxN grid • One player, one wumpus, one or more pits • Goal: find gold while avoiding wumpus and pits • Percepts: • Glitter (gold is in this square) • Stench (wumpus is within 1 square N,E,S,W) • Breeze (pit is within 1 square N, E, S, W)

  4. Wumpus Example

  5. Examples of reasoning • If the player is in square (1, 0) and the percept is breeze, then there must be a pit in (0,0) or a pit in (2,0) or a pit in (1,1). • If the player is in (0,0) [and still alive], there is not a pit in (0,0). • If there is no breeze in (0,0), there is no pit in (0,1) • If there is also no breeze in (0,1) then there is no pit in (1,1). • Therefore, there must be a pit in (2,0)

  6. Formalizing Reasoning • Information is represented in sentences, which must have correct syntax ( 1 + 2 ) * 7 = 21 vs. 2 ) + 7 = * ( 1 21 • The meaning of a sentence (semantics) defines its truth in each model (possible world) • One sentence entails another sentence if the second one follows logically from the first; i.e. every model that has the first true, also has the second true. • Inference is the process of deriving a specific sentence from a KB (where the sentence must be entailed by the KB)

  7. Desirable properties of an inference algorithm • Soundness • Only sentences that are entailed by a KB will be derived by the inference algorithm • Completeness • Every sentence that is entailed by a KB will be derived by the inference algorithm (eventually) • If these properties are true, then every sentence derived from a true KB will be true in the world. • All reasoning can be done in a model, not the world!

  8. Propositional Logic • Syntax: Sentence -> true, false, P, Q, R … primitive sent. sentence not ( sentencesentence ) and ( sentencesentence ) or ( sentencesentence ) implies (if) ( sentence sentence ) if & only if (iff) ( sentence ) • Note: propositional logic can be directly implemented in hardware using logic gates for operations

  9. Propositional Logic Sentences • If there is a pit at [1,1], there is a breeze at [1,0] P11  B10 • There is a breeze at [2,2], if and only if there is a pit in the neighborhood B22  ( P21  P23  P12  P32 ) • There is no breeze at [2,2] B22

  10. Propositional Logic Inference • Question: Does KB entail S? • Method 1: Truth Table Entailment • Construct a truth table whose columns are all propositions used in the sentences in KB. • If S is true everywhere all sentences in KB are true, then KB entails S (otherwise not) • Method 2: Proof • Proof by deduction • Proof by contradiction • Etc.

  11. Truth Table Entailment A^C, C does not entail BC A,B, Entails AB

  12. Truth Table Entailment is… • Sound • by definition, since it directly implements the definition of entailment • Complete • Only when the KB (and therefore the truth table) is finite • Time consuming • The truth table size is 2number of statements, and we have to check every row!

  13. Rules for Deductive Proofs • Modus Ponens • Given: S1  S2 and S1, derive S2 • And-elimination • Given: S1  S2, derive S1 • Given: S1  S2, derive S2 • DeMorgan’s Law • Given ( A  B) derive A  B • Given ( A  B) derive A  B • More on p. 210

  14. Example Proof by Deduction • Knowledge S1: B22  ( P21  P23  P12  P32 ) rule S2: B22 observation • Inferences S3: (B22  (P21  P23  P12  P32 )) ((P21  P23  P12  P32 )  B22) [S1,bi elim] S4: ((P21  P23  P12  P32 )  B22) [S3, and elim] S5: (B22( P21  P23  P12  P32 )) [contrapos] S6: (P21  P23  P12  P32 ) [S2,S6, MP] S7: P21  P23  P12  P32 [S6, DeMorg]

  15. Evaluation of Deductive Inference (using p. 110 rules) • Sound • Yes, because the inference rules themselves are sound. (This can be proven using a truth table argument). • Complete • If we allow all possible inference rules, we’re searching in an infinite space, hence not complete • If we limit inference rules, we run the risk of leaving out the necessary one… • Monotonic • If we have a proof, adding information to the DB will not invalidate the proof

  16. Resolution • Resolution allows a complete inference mechanism (search-based) using only one rule of inference • Resolution rule: • Given: P1  P2  P3 … Pn, and P1  Q1 … Qm • Conclude: P2  P3 … Pn  Q1 … Qm Complementary literals P1 and P1 “cancel out” • Why it works: • Consider 2 cases: P1 is true, and P1 is false

  17. Resolution in Wumpus World • There is a pit at 2,1 or 2,3 or 1,2 or 3,2 • P21  P23  P12  P32 • There is no pit at 2,1 • P21 • Therefore (by resolution) the pit must be at 2,3 or 1,2 or 3,2 • P23  P12  P32

  18. Proof using Resolution • To prove a fact P, repeatedly apply resolution until either: • No new clauses can be added, (KB does not entail P) • The empty clause is derived (KB does entail P) • This is proof by contradiction: if we prove that KB  P derives a contradiction (empty clause) and we know KB is true, then P must be false, so P must be true! • To apply resolution mechanically, facts need to be in Conjunctive Normal Form (CNF) • To carry out the proof, need a search mechanism that will enumerate all possible resolutions.

  19. Conjunctive Normal Form for B22  ( P21  P23  P12  P32 ) • Eliminate , replacing with two implications (B22  ( P21  P23  P12  P32 ))  ((P21  P23  P12  P32 )  B22) • Replace implication (A  B) by A B (B22  ( P21  P23  P12  P32 ))  ((P21  P23  P12  P32 )  B22) • Move  “inwards” (unnecessary parens removed) (B22  P21  P23  P12  P32 )  ((P21  P23  P12  P32 )  B22) 4. Distributive Law (B22  P21  P23  P12  P32 )  (P21  B22)  (P23  B22) (P12  B22) (P32  B22) (Final result has 5 clauses)

  20. Resolution Example • Given B22 and P21 and P23 and P32 , prove P12 • (B22  P21  P23  P12  P32 ) ; P12 • (B22  P21  P23  P32 ) ; P21 • (B22  P23  P32 ) ; P23 • (B22  P32 ) ; P32 • (B22) ; B22 • [empty clause]

  21. Mechanical Approach to Resolution • Use DFS in “clause space” • Initial state is Not (whatever is being proven) • Goal state is Empty clause • Next state generator finds all clauses in the KB [that include negations of one or more propositions in the current state]; next states are resolutions of those clauses with current state • Like all DFS, this is worst-case exponential (search all possible clauses)

  22. Evaluation of Resolution • Resolution is sound • Becase the resolution rule is true in all cases • Resolution is complete • Provided a complete search method is used to find the proof, if a proof can be found it will • Note: you must know what you’re trying to prove in order to prove it! • Resolution is exponential • The number of clauses that we must search grows exponentially… • If it didn’t we could use resolution to solve 3SAT in polynomial time!

  23. Horn Clauses • A Horn Clause is a CNF clause with exactly one positive literal • The positive literal is called the head • The negative literals are called the body • Prolog: head:- body1, body2, body3 … • English: “To prove the head, prove body1, …” • Implication: If (body1, body2 …) then head • Horn Clauses form the basis of forward and backward chaining • The Prolog language is based on Horn Clauses • Deciding entailment with Horn Clauses is linear in the size of the knowledge base

  24. Reasoning with Horn Clauses • Forward Chaining • For each new piece of data, generate all new facts, until the desired fact is generated • Data-directed reasoning • Backward Chaining • To prove the goal, find a clause that contains the goal as its head, and prove the body recursively • (Backtrack when you chose the wrong clause) • Goal-directed reasoning

  25. First Order Logic (ch. 8) • Has a greater expressive power than propositional logic • We no longer need a separate rule for each square to say which other squares are breezy/pits • Allows for facts, objects, and relations • In programming terms, allows classes, functions and variables

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