 |
|
[Amazon.com] Artificial Intelligence: A Modern Approach introduces basic ideas in artificial intelligence from the perspective of building intelligent agents, which the authors define as "anything that can be viewed as perceiving its environment through sensors and acting upon the environment through effectors." This textbook is up-to-date and is organized using the latest principles of good textbook design. It includes historical notes at the end of every chapter, exercises, margin notes, a bibliography, and a competent index. Artificial Intelligence: A Modern Approach covers a wide array of material, including first-order logic, game playing, knowledge representation, planning, and reinforcement learning. --This text refers to the Hardcover edition.
|
 |
I. ARTIFICIAL INTELLIGENCE.
1. Introduction. 2. Intelligent Agents.
II. PROBLEM-SOLVING.
3. Solving Problems by Searching. 4. Informed Search and Exploration. 5. Constraint Satisfaction Problems. 6. Adversarial Search.
III. KNOWLEDGE AND REASONING.
7. Logical Agents. 8. First-Order Logic. 9. Inference in First-Order Logic. 10. Knowledge Representation.
IV. PLANNING.
11. Planning. 12. Planning and Acting in the Read World.
V. UNCERTAIN KNOWLEDGE AND REASONING.
13. Uncertainty. 14. Probabilistic Reasoning Systems. 15. Probabilistic Reasoning Over Time. 16. Making Simple Decisions. 17. Making Complex Decisions.
VI. LEARNING.
18. Learning from Observations. 19. Statistical Learning. 20. Reinforcement Learning. 21. Knowledge in Learning.
VII. COMMUNICATING, PERCEIVING, AND ACTING.
22. Agents that Communicate. 23. Text Processing in the Large. 24. Perception. 25. Robotics.
VIII. CONCLUSIONS.
26. Philosophical Foundations. 27. AI: Present and Future. |
 |
|
 |
| Áغñ ÁßÀÔ´Ï´Ù. |
 |
|
|
|
|
|
|
|
|
|
|
|