artificial intelligence 15-381

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Artificial Intelligence 15-381. Introduction to AI & Search Methods I Jaime Carbonell jgc@cs.cmu.edu 28 August 2001. Today’s Topics. Are we in the right class? What exactly is AI, anyway? AI = search+knowledge+learning AI application areas Course Outline Administration and grading  - PowerPoint PPT Presentation

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Artificial Intelligence 15-381

Introduction to AI & Search Methods I

Jaime Carbonell

jgc@cs.cmu.edu

28 August 2001

Today’s Topics

Are we in the right class?

What exactly is AI, anyway?

AI = search+knowledge+learning

AI application areas

Course Outline

Administration and grading Basic search methods

What is AI: Some Quick Answers

From the Media: AI is…

…What socially-inept superhackers do …The opposite of natural stupidity …Building useful idiot-savant programs …Deep Blue (IBM’s chess program) …Robots with feelings (Spielberg)

What is AI: Some Quick Answers (cont.)

From Academia: AI is… …modeling aspects of human cognition by

computer …the study of solving ill-formed problems …"nothing more" than advanced algorithms

research …cool stuff! Machine learning, data mining,

speech, language, vision, web agents…and you can actually get paid a lot for having fun!

…what other CS folks don’t yet know how to do, and we AIers aren’t always too sure either

Operationally Speaking, AI is:

Applied Cognitive Science

Computational models of human reasoning• Problem solving• Scientific thinking

Models of non-introspective mental processes• Language comprehension, language learning• Human memory organization (STM, LTM)

Operationally Speaking, AI is:

Knowledge Engineering Codify human knowledge for specific tasks E.g.: Medical diagnosis, Machine Translation Central in 1970s & 80sjust one lecture here

Problem-Solving Methods How to encode and use knowledge to find answer E.g. HS, MEA, A*, Logic resolution Always at the very core of AImany lectures

Operationally Speaking, AI is:

Machine Learning

Learning as the hallmark of intelligence…but it is already practical in multiple applications

E.g.: D-trees, rule-induction, reinforcement, NNets Discredited in 1960s Vibrant core in 1990s Applications: data & text mining, speech, robotics Most active research area in AI many lectures

AI “Application” Areas

Rule-Based Expert Systems Medical Diagnosis: MYCIN, INTERNIST,

PUFF CSP Scheduling: ISIS, Airline scheduling

Data Mining Financial: Fraud detection, credit scoring Sales: Customer preferences, inventory Science: NASA galaxy DB, genome analysis

AI “Application” Areas (cont.)

Language Processing Speech: dictation, HCI Language: Machine Translation ML & NLP: Fact Extraction ML & words: Information Retrieval

Robotics Machine Vision Mobile Robots & “agents” Manipulation

AI-Based Problem Solving

State-Space <{S}, S0, {SGj}, {Oi}>

S0: Initial State

SG: Goal State (to achieve)

Oi: Operators O: {S} => {S}

AI-Based Problem Solving (cont.)

State-Space Navigation Forward Search: BFS, DFS, HS,… Backward Search: BFS-1, Backchaining,… Bi-Directional Search: BFS2,… Goal Reduction: Island-S, MEA… Transformation: {S} {S’} Abstraction: {S} {SA} + MEA ({SA})… Analogy: If Sim(P,P’) then Sol(P) Sol’(P’) …

More on the State Space

Useful Functions: Succ(si) = {sk | oj(si) = sk}

Reachable(si) = {U{sk} | Succ *(si)}

Succ-1(si) = {sk | oj(sk) = si)

Reachable-1(si) = {U{sk} | (Succ-1)*(si)}

s-Path(sa0, san

) = (sa0, sa1

,…, san)

…such that for all sa1 exists oj(sai

) = sai+1

o-Path(sa0, san

) = (oj0, oj1

,…, ojn-1)

…such that for all sa1 exists oj(sai

) = sai+1

More on the State Space (cont.)

Useful Concepts: Solution = o-Path(s0, sG) [or s-Path]

Cost(Solution) = cost(oj) … (often cost(oj) = 1)

P is solvable if at least one o-Path(s0, sG) exists Solutions may be constructed forward, backward

or any which way State spaces may be finite, infinite, implicit or

explicit

Zero-Knowledge Search

Simple Depth-First SearchDFS(Scurr, Sgoal, S-queue)

IF Scurr = Sgoal, SUCCESS

ELSE Append(Succ(Scurr), S-queue)

IF Null(S-queue), FAILURE

ELSE DFS(First(S-queue), Sgoal, Trail(S-queue))

Depth First Search

1

7

8

6

5

2

3

4… SG

SI

DFS (cont.)

Problems with DFS Deep (possibly infinite) rat holes

depth-bounded DFS, D = max depth Loops: Succ(Succ(..Succ(S))) = S

Keep s-Path and always check Scurr

Non-Optimality: Other paths may be less costly

No fix here for DFS Worst-case time complexity (O(bmax(D,d))

DFS (cont.)

When is DFS useful? Very-high solution density Satisficing vs. optimizing Memory-limited search: O(d) space Solution at Known-depth (then D=d)

Zero Knowledge Search (cont.)

Simple Breadth-First SearchBFS(Scurr, Sgoal, S-queue)

IF Scurr = Sgoal, SUCCESS

ELSE Append(Succ(Scurr), S-queue)

IF Null(S-queue), FAILURE

ELSE BFS(Last(S-queue), Sgoal, All-But-Last(S-queue))

Breadth-First Search

1

12

111098765

432

SG

Simple BFS cont.

Problems with BFS: Loops: Succ(Succ(…Succ(S)))=S

Pseudo-loops: Revisiting old states off-path Keep full visited prefix tree

Worst case time complexity O(bd) Worst case space complexity O(bd)

When is BFS Useful? Guarantee shortest path Very sparse solution space (better if some solution is

close to SI)

Zero Knowledge Search (cont.)

Backwards Breadth-First SearchBFS(Scurr, Sinit, S-queue)

IF Scurr = Sinit, SUCCESS

ELSE Append(Succ-1(Scurr), S-queue)

IF Null(S-queue), FAILURE

ELSE BFS(Last(S-queue), Sinit, All-But-Last(S-queue))

Backwards Breadth-First Search

9

87654

32

1

…SI

SG

Backward-BFS (cont.)

Problems with Backward-BFS All the ones for BFS Succ(Scurr) must be invertible: Succ-1(Scurr)

When is Backward-BFS useful? In general, same as BFS If backward branching<forward branching

Bi-Directional SearchAlgorithm:

1. Initialize Fboundary:= {Sinit}

2. Initialize Bboundary:= {Sgoal}

3. Initialize treef:= Sinit

4. Initialize treeb:= Sgoal

5. For every Sf in Fboundary

IF Succ(Sf) intersects Bboundary

THEN return APPEND(Path(treef), Path-1(treeb))

ELSE Replace Sf by Succ(Sf) & UPDATE (treef)

6. For every Sb in Bboundary

IF Succ(Sb) intersects Fboundary

THEN return APPEND(Path(treef), Path-1(treeb))

ELSE Replace Sb by Succ-1(Sb) & UPDATE (treeb) 7. o to 5.

Note: where’s the bug?

Bi-Directional Breadth-First Search

1

3 4

8 9 10 11 12

2

13

75 6

SG

SI

Bi-Directional Search (cont.)

Problems with Bi-BFS Loops: Succ(Succ(…Succ(S))) = S

Loops: Succ-1(Succ-1(… Succ-1(S)))) = SPseudo-loops: Revisiting old states off-path

Keep full visited prefix treef, trees

Succ(Scurr)must be invertible: Succ-1(Scurr)

When is Bi-BFS useful? Space and time complexity:

O(bfd/2) + O(bb

d/2) = O(bd/2) if bf = bb

Island-Driven BFS

Definition:An island is a state known a-priori to be on the solution path between Sinit and Sgoal.

If there are k sequential islands: BFS(Sinit, S-(goal)=

APPEND(BFS(Sinit, Sk1), BFS(Sk1

, Sk2),…BFS(SIk

, Sgoal))

Upper bound complexity: O(k*maxi=0:k[bdki,ki+1])

Complexity if islands are evenly spaced:O((k+1)*bd/(k+1))

Island-Driven Search

1 SI

SG

SIsland

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