Principles of Artificial IntelligenceA classic introduction to artificial intelligence intended to bridge the gap between theory and practice, Principles of Artificial Intelligence describes fundamental AI ideas that underlie applications such as natural language processing, automatic programming, robotics, machine vision, automatic theorem proving, and intelligent data retrieval. Rather than focusing on the subject matter of the applications, the book is organized around general computational concepts involving the kinds of data structures used, the types of operations performed on the data structures, and the properties of the control strategies used. Principles of Artificial Intelligenceevolved from the author's courses and seminars at Stanford University and University of Massachusetts, Amherst, and is suitable for text use in a senior or graduate AI course, or for individual study. |
From inside the book
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... applied in several different problem areas. To help motivate our subsequent discussions, we next describe some of these applications. 0.1. SOME APPLICATIONS OF ARTIFICIAL INTELLIGENCE 0.1.1. NATURAL LANGUAGE PROCESSING When humans ...
... applied at many levels of the perception process. Several aligned segments suggest a straight line; a line detector can be employed to test it. Adjacent rectangles suggest the faces of a solid prismatic object; an object detector can be ...
... applied to the scene, confirms this expectation, thus raising confidence in the window hypothesis. We discuss some of the fundamental ideas underlying frame-structured representations and inference processes later in the book. 0.2 ...
... applied. Application of the rule changes the database. The control system chooses which applicable rule should be applied and ceases computation when a termination condition on the global database is satisfied. There are several ...
... applied so that it can compose them into the sequence representing the problem solution. In certain problems, we want the solution to be subject to certain additional constraints. For example, we may want the solution to our 8-puzzle ...
Contents
1 | |
17 | |
53 | |
CHAPTER 3 SEARCH STRATEGIES FOR DECOMPOSABLE PRODUCTION SYSTEMS | 99 |
CHAPTER 4 THE PREDICATE CALCULUS IN AI | 131 |
CHAPTER 5 RESOLUTION REFUTATION SYSTEMS | 161 |
CHAPTER 6 RULEBASED DEDUCTION SYSTEMS | 193 |
CHAPTER 7 BASIC PLANGENERATING SYSTEMS | 275 |
CHAPTER 8 ADVANCED PLANGENERATING SYSTEMS | 321 |
CHAPTER 9 STRUCTURED OBJECT REPRESENTATIONS | 361 |
PROSPECTUS | 417 |
BIBLIOGRAPHY | 429 |
AUTHOR INDEX | 467 |
SUBJECT INDEX | 471 |