Comparisons of stochastic matrices, with applications in information theory, statistics, economics, and population sciences

書誌事項

Comparisons of stochastic matrices, with applications in information theory, statistics, economics, and population sciences

Joel E. Cohen, J.H.B. Kemperman, Gh. Zbăganu

Birkhäuser, c1998

  • : Boston
  • : Basel

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注記

Includes bibliographical references (p. [149]-154) and index

内容説明・目次

巻冊次

: Boston ISBN 9780817640828

内容説明

The focus of this monograph is on generalizing the notion of variation in a set of numbers to variation in a set of probability distributions. The authors collect some known ways of comparing stochastic matrices in the context of information theory, statistics, economics, and population sciences. They then generalize these comparisons, introduce new comparisons, and establish the relations of implication or equivalence among sixteen of these comparisons. Some of the possible implications among these comparisons remain open questions. The results in this book establish a new field of investigation for both mathematicians and scientific users interested in the variations among multiple probability distributions. The work is divided into two parts. The first deals with finite stochastic matrices, which may be interpreted as collections of discrete probability distributions. The first part is presented in a fairly elementary mathematical setting. The introduction provides sketches of applications of concepts and methods to discrete memory-less channels in information theory, to the design and comparison of experiments in statistics, to the measurement of inequality in economics, and to various analytical problems in population genetics, ecology, and demography. Part two is more general and entails more difficult analysis involving Markov kernels. Here, many results of the first part are placed in a more general setting, as required in more sophisticated applications. A great strength of this text is the resulting connections among ideas from diverse fields: mathematics, statistics, economics, and population biology. In providing this array of new tools and concepts, the work will appeal to the practitioner. At the same time, it will serve as an excellent resource for self-study of for a graduate seminar course, as well as a stimulus to further research.

目次

Part I: Comparing Partial Orderings Among Stochastic Matrices.- Introduction.- Notation and Definitions.- Generalizations of Classical Channel Comparisons.- Degradation is the Same as Increasing Density.- Shannon's Inclusion Implies Smaller Capacity.- A Simple Case: Matrices A and B have only Two Columns.- Open Problems.- Part II: Divergence and Contraction Coefficients.- Introduction, Definitions, and Notation.- A Generalization of an Inequality of Dobrushin.- The Divergence.- Divergence between Images of Measures via Markov Kernels, Contraction Coefficients.- A Particular Case: At Most Countable Spaces.- Behavior of (T) for a Fixed Markov Kernel T.- Applications of Global Divergence to Comparison of Experiments.- History of the Problem.
巻冊次

: Basel ISBN 9783764340827

内容説明

Focuses on generalizing the notion of variation in a set of numbers to the notion of variation in a set of probability distributions. The work collects known ways of comparing stochastic matrices, and then generalizes these, and establishes the relations of implication or equivalence among some.

目次

  • Part 1 Partial orderings among stochastic matrices, Joel E. Cohen et al: introduction
  • notation and definitions
  • generalizations of classical channel comparisons
  • degradation is the same as increasing density
  • Shannon's inclusion implies smaller capacity
  • a simple case - matrices A and B haver only two columns
  • open problems. Part 2 Divergence and contraction coefficients, Gh. Zbaganu: introduction, definitions and notations
  • a generalization of an inequality of Dobrushin
  • the divergence
  • divergence between images of measures via Markov kernels -contraction coefficients
  • a particular case - at most countable spaces
  • behaviour of phi-eta phi(tau) for a fixed Markov kernel tau
  • applications of global divergences to comparison of experiments
  • history of the problem.

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詳細情報

  • NII書誌ID(NCID)
    BA38797496
  • ISBN
    • 0817640827
    • 3764340827
  • LCCN
    98016659
  • 出版国コード
    us
  • タイトル言語コード
    eng
  • 本文言語コード
    eng
  • 出版地
    Boston
  • ページ数/冊数
    viii, 158 p.
  • 大きさ
    25 cm
  • 分類
  • 件名
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