Artificial intelligence a guide to intelligent systems

Negnevitsky, Michael

Artificial intelligence a guide to intelligent systems [Book] Michael Negnevitsky. - 2nd Ed. - Pearson Education New Delhi - xiv, 415 p. : ill. ; 24 cm All

Table of Content 1. Introduction To Knowledge-Based Intelligent Systems 2. Rule-Based Expert Systems 3. Uncertainty Management In Rule-Based Expert Systems 4. Fuzzy Expert Systems 5. Frame-Based Expert Systems 6. Artificial Neural Networks 7. Evolutionary Computation 8. Hybrid Intelligent Systems 9. Knowledge Engineering And Data Mining Glossary Appendix Index

artificial Intelligence is one of the most rapidly evolving subjects within the computing/engineering curriculum, with an emphasis on creating practical applications from hybrid techniques. Despite this, the traditional textbooks continue to expect mathematical and programming expertise beyond the scope of current undergraduates and focus on areas not relevant to many of today's courses. Negnevitsky shows students how to build intelligent systems drawing on techniques from knowledge-based systems, neural networks, fuzzy systems, evolutionary computation and now also intelligent agents. The principles behind these techniques are explained without resorting to complex mathematics, showing how the various techniques are implemented, when they are useful and when they are not. No particular programming language is assumed and the book does not tie itself to any of the software tools available. However, available tools and their uses will be described and program examples will be given in Java. The lack of assumed prior knowledge makes this book ideal for any introductory courses in artificial intelligence or intelligent systems design, while the contemporary coverage means more advanced students will benefit by discovering the latest state-of-the-art techniques.

All.

9788131720493


Expert System (Computer Sciences)
Artificial intelligence

006.3