Entropy Optimization Principles with Applications

Entropy Optimization Principles with Applications
Title Entropy Optimization Principles with Applications PDF eBook
Author Jagat Narain Kapur
Publisher
Pages 440
Release 1992
Genre Computers
ISBN

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This senior-level textbook on entropy provides a conceptual framework for the study of probabilistic systems with its elucidation of three key concepts - Shannon's information theory, Jaynes' maximum entropy principle and Kullback's minimum cross-entropy principle.

Entropy Optimization Principles and Their Applications in Statistics

Entropy Optimization Principles and Their Applications in Statistics
Title Entropy Optimization Principles and Their Applications in Statistics PDF eBook
Author Parmil Kumar
Publisher
Pages 106
Release 2001
Genre
ISBN

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Entropy Measures, Maximum Entropy Principle and Emerging Applications

Entropy Measures, Maximum Entropy Principle and Emerging Applications
Title Entropy Measures, Maximum Entropy Principle and Emerging Applications PDF eBook
Author Karmeshu
Publisher Springer
Pages 300
Release 2012-10-01
Genre Technology & Engineering
ISBN 3540362126

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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.

Measures of Information and Their Applications

Measures of Information and Their Applications
Title Measures of Information and Their Applications PDF eBook
Author Jagat Narain Kapur
Publisher New Age International
Pages 592
Release 1994
Genre Computers
ISBN

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The present book may be regarded as a successor of author's Maximum Entropy Models in Science and Engineering (Wiley), Generalized Maximum Entropy Principle (Sandford), Entropy Optimization Principles and Their Applications (Academic) and Insight into Entropy Optimizations Principles (MSTS). It contains sixty research investigations of the author on measures of entropy, directed divergence, weighted directed divergence, information, principles of maximum entropy, minimum entropy, minimum cross-entropy, minimum entropy, minimum information, minimum weighted information and maximum weighted entropy, most likely and most feasible distributions, duals of optimization problems, entropy optimization under inequality constraints, characterising moments, parameter estimation, maximum entropy approximation for a probability distribution, proving inequalities, laws of information, entropic mean, mean-entropy frontier, logistic-type growth models, birth-death processes, distributions of statistical mechanics, estimation of missing values, theorems of information theory and many others.

The Use of Entropy Optimization Principles in Parameter Estimation

The Use of Entropy Optimization Principles in Parameter Estimation
Title The Use of Entropy Optimization Principles in Parameter Estimation PDF eBook
Author Charlotte De Fraiture
Publisher
Pages 198
Release 2003
Genre Crops and water
ISBN

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The Use of Entropy Optimization Principles in Parameter Estimation

The Use of Entropy Optimization Principles in Parameter Estimation
Title The Use of Entropy Optimization Principles in Parameter Estimation PDF eBook
Author Charlotte Du Fraiture
Publisher
Pages 396
Release 2003
Genre Crops and water
ISBN

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Entropy Optimization and Mathematical Programming

Entropy Optimization and Mathematical Programming
Title Entropy Optimization and Mathematical Programming PDF eBook
Author Shu-Cherng Fang
Publisher Springer Science & Business Media
Pages 350
Release 2012-12-06
Genre Business & Economics
ISBN 1461561310

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Entropy optimization is a useful combination of classical engineering theory (entropy) with mathematical optimization. The resulting entropy optimization models have proved their usefulness with successful applications in areas such as image reconstruction, pattern recognition, statistical inference, queuing theory, spectral analysis, statistical mechanics, transportation planning, urban and regional planning, input-output analysis, portfolio investment, information analysis, and linear and nonlinear programming. While entropy optimization has been used in different fields, a good number of applicable solution methods have been loosely constructed without sufficient mathematical treatment. A systematic presentation with proper mathematical treatment of this material is needed by practitioners and researchers alike in all application areas. The purpose of this book is to meet this need. Entropy Optimization and Mathematical Programming offers perspectives that meet the needs of diverse user communities so that the users can apply entropy optimization techniques with complete comfort and ease. With this consideration, the authors focus on the entropy optimization problems in finite dimensional Euclidean space such that only some basic familiarity with optimization is required of the reader.