Entropy Measures, Maximum Entropy Principle and Emerging Applications

Lieferzeit: Lieferbar innerhalb 14 Tagen

213,99 

Studies in Fuzziness and Soft Computing 119

ISBN: 3540002421
ISBN 13: 9783540002420
Herausgeber: Karmeshu
Verlag: Springer Verlag GmbH
Umfang: x, 297 S.
Erscheinungsdatum: 11.03.2003
Produktform: Gebunden/Hardback
Einband: GEB

This book is dedicated to Prof. J. Kapur and his contributions to the field of entropy measures and maximum entropy applications. Eminent scholars in various fields of applied information theory have been invited to contribute to this Festschrift, collected on the occasion of his 75th birthday. The articles cover topics in the areas of physical, biological, engineering and social sciences such as information technology, soft computing, nonlinear systems or molecular biology with a thematic coherence. The volume will be useful to researchers working in these different fields enabling them to see the underlying unity and power of entropy optimization frameworks.

Artikelnummer: 1464831 Kategorie:

Beschreibung

The last two decades have witnessed an enormous growth with regard to ap plications of information theoretic framework in areas of physical, biological, engineering and even social sciences. In particular, growth has been spectac ular in the field of information technology,soft computing,nonlinear systems and molecular biology. Claude Shannon in 1948 laid the foundation of the field of information theory in the context of communication theory. It is in deed remarkable that his framework is as relevant today as was when he 1 proposed it. Shannon died on Feb 24, 2001. Arun Netravali observes "As if assuming that inexpensive, high-speed processing would come to pass, Shan non figured out the upper limits on communication rates. First in telephone channels, then in optical communications, and now in wireless, Shannon has had the utmost value in defining the engineering limits we face". Shannon introduced the concept of entropy. The notable feature of the entropy frame work is that it enables quantification of uncertainty present in a system. In many realistic situations one is confronted only with partial or incomplete information in the form of moment, or bounds on these values etc.; and it is then required to construct a probabilistic model from this partial information. In such situations, the principle of maximum entropy provides a rational ba sis for constructing a probabilistic model. It is thus necessary and important to keep track of advances in the applications of maximum entropy principle to ever expanding areas of knowledge.

Inhaltsverzeichnis

Uncertainty, Entropy and Maximum Entropy Principle - An Overview.- Facets of Generalized Uncertainty-based Information.- Application of the Maximum (Information) Entropy Principle to Stochastic Processes far from Thermal Equilibrium.- Maximum Entropy Principle, Information of Non-Random Functions and Complex Fractals.- Geometric Ideas in Minimum Cross-Entropy.- Information-Theoretic Measures for Knowledge Discovery and Data Mining.- A Universal Maximum Entropy Solution for Complex Queuing Systems and Networks.- Minimum Mean Deviation from the Steady-State Condition in Queuing Theory.- On the Utility of Different Entropy Measures in Image Thresholding.- Entropic Thresholding Algorithms and Their Optimizations.- Entropy and Complexity of Sequences.- Some Lessons for Molecular Biology from Information Theory.- Computation of the MinMax Measure.- On Three Functional Equations Related to the Bose-Einstein Entropy.- The Entropy Theory as a Decision Making Tool in Environmental and Water Resources.

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