Cambridge Catalog  
  • Your account
  • View basket
  • Help
Home > Catalog > Artificial Intelligence
Artificial Intelligence
AddThis

Details

  • 187 b/w illus. 173 exercises
  • Page extent: 682 pages
  • Size: 253 x 215 mm
  • Weight: 1.31 kg

Library of Congress

  • Dewey number: 006.3
  • Dewey version: 22
  • LC Classification: Q342 .P66 2010
  • LC Subject headings:
    • Computational intelligence--Textbooks
    • Artificial intelligence--Textbooks

Library of Congress Record

Add to basket

Hardback

 (ISBN-13: 9780521519007)

Temporarily unavailable - available from November 2017

$105.00 (X)

Artificial Intelligence
Cambridge University Press
9780521519007 - Artificial Intelligence - Foundations of Computational Agents - By David L. Poole and Alan K. Mackworth
Table of Contents

Contents

Preface
xiii
I             Agents in the World: What Are Agents and How Can They Be Built?
1
1             Artificial Intelligence and Agents
3
1.1           What Is Artificial Intelligence?
3
1.2           A Brief History of AI
6
1.3           Agents Situated in Environments
10
1.4           Knowledge Representation
11
1.5           Dimensions of Complexity
19
1.6           Prototypical Applications
29
1.7           Overview of the Book
39
1.8           Review
40
1.9           References and Further Reading
40
1.10          Exercises
42
2             Agent Architectures and Hierarchical Control
43
2.1           Agents
43
2.2           Agent Systems
44
2.3           Hierarchical Control
50
2.4           Embedded and Simulated Agents
59
2.5           Acting with Reasoning
60
2.6           Review
65
2.7           References and Further Reading
66
2.8           Exercises
66
II            Representing and Reasoning
69
3             States and Searching
71
3.1           Problem Solving as Search
71
3.2           State Spaces
72
3.3           Graph Searching
74
3.4           A Generic Searching Algorithm
77
3.5           Uninformed Search Strategies
79
3.6           Heuristic Search
87
3.7           More Sophisticated Search
92
3.8           Review
106
3.9           References and Further Reading
106
3.10          Exercises
107
4             Features and Constraints
111
4.1           Features and States
111
4.2           PossibleWorlds, Variables, and Constraints
113
4.3           Generate-and-Test Algorithms
118
4.4           Solving CSPs Using Search
119
4.5           Consistency Algorithms
120
4.6           Domain Splitting
125
4.7           Variable Elimination
127
4.8           Local Search
130
4.9           Population-Based Methods
141
4.10          Optimization
144
4.11          Review
151
4.12          References and Further Reading
151
4.13          Exercises
152
5             Propositions and Inference
157
5.1           Propositions
157
5.2           Propositional Definite Clauses
163
5.3           Knowledge Representation Issues
174
5.4           Proving by Contradictions
185
5.5           Complete Knowledge Assumption
193
5.6           Abduction
199
5.7           Causal Models
204
5.8           Review
206
5.9           References and Further Reading
207
5.10          Exercises
208
6             Reasoning Under Uncertainty
219
6.1           Probability
219
6.2           Independence
232
6.3           Belief Networks
235
6.4           Probabilistic Inference
248
6.5           Probability and Time
266
6.6           Review
274
6.7           References and Further Reading
274
6.8           Exercises
275
III           Learning and Planning
281
7             Learning: Overview and Supervised Learning
283
7.1           Learning Issues
284
7.2           Supervised Learning
288
7.3           Basic Models for Supervised Learning
298
7.4           Composite Models
313
7.5           Avoiding Overfitting
320
7.6           Case-Based Reasoning
324
7.7           Learning as Refining the Hypothesis Space
327
7.8           Bayesian Learning
334
7.9           Review
340
7.10          References and Further Reading
341
7.11          Exercises
342
8             Planning with Certainty
349
8.1           Representing States, Actions, and Goals
350
8.2           Forward Planning
356
8.3           Regression Planning
357
8.4           Planning as a CSP
360
8.5           Partial-Order Planning
363
8.6           Review
366
8.7           References and Further Reading
367
8.8           Exercises
367
9             Planning Under Uncertainty
371
9.1           Preferences and Utility
373
9.2           One-Off Decisions
381
9.3           Sequential Decisions
386
9.4           The Value of Information and Control
396
9.5           Decision Processes
399
9.6           Review
412
9.7           References and Further Reading
413
9.8           Exercises
413
10            Multiagent Systems
423
10.1          Multiagent Framework
423
10.2          Representations of Games
425
10.3          Computing Strategies with Perfect Information
430
10.4          Partially Observable Multiagent Reasoning
433
10.5          Group Decision Making
445
10.6          Mechanism Design
446
10.7          Review
449
10.8          References and Further Reading
449
10.9          Exercises
450
11            Beyond Supervised Learning
451
11.1          Clustering
451
11.2          Learning Belief Networks
458
11.3          Reinforcement Learning
463
11.4          Review
485
11.5          References and Further Reading
486
11.6          Exercises
486
IV            Reasoning About Individuals and Relations
489
12            Individuals and Relations
491
12.1          Exploiting Structure Beyond Features
492
12.2          Symbols and Semantics
493
12.3          Datalog: A Relational Rule Language
494
12.4          Proofs and Substitutions
506
12.5          Function Symbols
512
12.6          Applications in Natural Language Processing
520
12.7          Equality
532
12.8          Complete Knowledge Assumption
537
12.9          Review
541
12.10         References and Further Reading
542
12.11         Exercises
542
13            Ontologies and Knowledge-Based Systems
549
13.1          Knowledge Sharing
549
13.2          Flexible Representations
550
13.3          Ontologies and Knowledge Sharing
563
13.4          Querying Users and Other Knowledge Sources
576
13.5          Implementing Knowledge-Based Systems
579
13.6          Review
591
13.7          References and Further Reading
591
13.8          Exercises
592
14            Relational Planning, Learning, and Probabilistic Reasoning
597
14.1          Planning with Individuals and Relations
598
14.2          Learning with Individuals and Relations
606
14.3          Probabilistic Relational Models
611
14.4          Review
618
14.5          References and Further Reading
618
14.6          Exercises
620
V             The Big Picture
623
15            Retrospect and Prospect
625
15.1          Dimensions of Complexity Revisited
625
15.2          Social and Ethical Consequences
629
15.3          References and Further Reading
632
A             Mathematical Preliminaries and Notation
633
A.1           Discrete Mathematics
633
A.2           Functions, Factors, and Arrays
634
A.3           Relations and the Relational Algebra
635
Bibliography
637
Index
653



© Cambridge University Press
printer iconPrinter friendly version AddThis