Titel: Uncertainty and Information
52:B&W 6. 14 x 9. 21in or 234 x 156mm (Royal 8vo) Case Laminate on White w/Gloss Lam.
John Wiley & Sons
8. November 2005 - gebunden - 518 Seiten
Deal with information and uncertainty properly and efficiently using tools emerging from generalized information theory
Uncertainty and Information: Foundations of Generalized Information Theory contains comprehensive and up-to-date coverage of results that have emerged from a research program begun by the author in the early 1990s under the name "generalized information theory" (GIT). This ongoing research program aims to develop a formal mathematical treatment of the interrelated concepts of uncertainty and information in all their varieties. In GIT, as in classical information theory, uncertainty (predictive, retrodictive, diagnostic, prescriptive, and the like) is viewed as a manifestation of information deficiency, while information is viewed as anything capable of reducing the uncertainty. A broad conceptual framework for GIT is obtained by expanding the formalized language of classical set theory to include more expressive formalized languages based on fuzzy sets of various types, and by expanding classical theory of additive measures to include more expressive non-additive measures of various types.
This landmark book examines each of several theories for dealing with particular types of uncertainty at the following four levels:
* Mathematical formalization of the conceived type of uncertainty
* Calculus for manipulating this particular type of uncertainty
* Justifiable ways of measuring the amount of uncertainty in any situation formalizable in the theory
* Methodological aspects of the theory
With extensive use of examples and illustrations to clarify complex material and demonstrate practical applications, generous historical and bibliographical notes, end-of-chapter exercises to test readers' newfound knowledge, glossaries, and an Instructor's Manual, this is an excellent graduate-level textbook, as well as an outstanding reference for researchers and practitioners who deal with the various problems involving uncertainty and information.
2. Classical Possibility-Based Uncertainty Theory.
3. Classical Probability-Based Uncertainty Theory.
4. Generalized Measures and Imprecise Probabilities.
5. Special Theories of Imprecise Probabilities.
6. Measures of Uncertainty and Information.
7. Fuzzy Set Theory.
8. Fuzzification of Uncertainty Theories.
9. Methodological Issues.
Appendix A: Uniqueness of the U-Uncertainty.
Appendix B: Uniqueness of Generalized Hartley in DST.
Appendix C: Correctness of Algorithm 6.1.
Appendix D: Proper Range of Generalized Shannon Entropy.
Appendix E: Maximum of GSa in Sec. 6.10.
Appendix F: Glossary of Key Concepts.
Appendix G: Glossary of Symbols.
GEORGE J. KLIR, PhD, is currently Distinguished Professor of Systems Science at Binghamton University, SUNY. Since immigrating to the U.S. in 1966, he has held positions at UCLA, Fairleigh Dickinson University, and Binghamton University. He is a Life Fellow of IEEE, IFSA, and the Netherlands Institute for Advanced Studies. He has served as president of SGSR, IFSR, NAFIPS, and IFSA. He has published over 300 research papers and sixteen books, and has edited ten books. He has also served as Editor in Chief of the International Journal of General Systems since 1974 and of the IFSR International Book Series on Systems Science and Engineering since 1985. He has received numerous professional awards, including five honorary doctoral degrees, Bernard Bolzano's Gold Medal, Arnold Kaufmann's Gold Medal, and the SUNY Chancellor's Award for "Exemplary Contributions to Research and Scholarship." He is listed in Who's Who in America and Who's Who in the World. His current research interests include intelligent systems, soft computing, generalized information theory, systems modeling and design, fuzzy systems, and the theory of generalized measures. He has guided twenty-nine successful doctoral dissertations in these areas. Some of his research has been funded by grants from NSF, ONR, the United States Air Force, NASA, Sandia Labs, NATO, and various industries.
"..will establish a better understanding of the complex concepts...will make significant contributions toward stimulating research in the area of generalized information theory." (Computing Reviews.com, October 17, 2006) "...contains comprehensive and up-to-date coverage...can serve as a graduate-level text and a reference for researchers and practitioners..." (IEEE Computer Magazine, February 2006)