程序代写代做代考 data structure algorithm chain Logical Agents

Logical Agents

CISC 6525
Logical Agents
Chapter 7

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 Jets won” entails “Either the Giants won or the Jets 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)

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

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

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

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

FC reaches a fixed point where no new atomic sentences are derived
Consider the final state as a model m, assigning true/false to symbols
Every clause in the original KB is true in m
a1  …  ak  b
Hence m is a model of KB
If KB╞ q, q is true in every model of KB, including m

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
has already been proved true, or
has already failed

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:
Early termination
A clause is true if any literal is true.
A sentence is false if any clause is false.

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.

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)

m = number of clauses
n = number of symbols

Hard problems seem to cluster near m/n = 4.3 (critical point)

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
t
t

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