E. T. Jaynes: Papers on Probability, Statistics and Statistical Physics
The first six chapters of this volume present the author's 'predictive' or information theoretic' approach to statistical mechanics, in which the basic probability distributions over microstates are obtained as distributions of maximum entropy (Le. , as distributions that are most non-committal with regard to missing information among all those satisfying the macroscopically given constraints). There is then no need to make additional assumptions of ergodicity or metric transitivity; the theory proceeds entirely by inference from macroscopic measurements and the underlying dynamical assumptions. Moreover, the method of maximizing the entropy is completely general and applies, in particular, to irreversible processes as well as to reversible ones. The next three chapters provide a broader framework - at once Bayesian and objective - for maximum entropy inference. The basic principles of inference, including the usual axioms of probability, are seen to rest on nothing more than requirements of consistency, above all, the requirement that in two problems where we have the same information we must assign the same probabilities. Thus, statistical mechanics is viewed as a branch of a general theory of inference, and the latter as an extension of the ordinary logic of consistency. Those who are familiar with the literature of statistics and statistical mechanics will recognize in both of these steps a genuine 'scientific revolution' - a complete reversal of earlier conceptions - and one of no small significance.
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E. T. Jaynes: Papers on Probability, Statistics and Statistical Physics
The first six chapters of this volume present the author's 'predictive' or information theoretic' approach to statistical mechanics, in which the basic probability distributions over microstates are obtained as distributions of maximum entropy (Le. , as distributions that are most non-committal with regard to missing information among all those satisfying the macroscopically given constraints). There is then no need to make additional assumptions of ergodicity or metric transitivity; the theory proceeds entirely by inference from macroscopic measurements and the underlying dynamical assumptions. Moreover, the method of maximizing the entropy is completely general and applies, in particular, to irreversible processes as well as to reversible ones. The next three chapters provide a broader framework - at once Bayesian and objective - for maximum entropy inference. The basic principles of inference, including the usual axioms of probability, are seen to rest on nothing more than requirements of consistency, above all, the requirement that in two problems where we have the same information we must assign the same probabilities. Thus, statistical mechanics is viewed as a branch of a general theory of inference, and the latter as an extension of the ordinary logic of consistency. Those who are familiar with the literature of statistics and statistical mechanics will recognize in both of these steps a genuine 'scientific revolution' - a complete reversal of earlier conceptions - and one of no small significance.
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E. T. Jaynes: Papers on Probability, Statistics and Statistical Physics

E. T. Jaynes: Papers on Probability, Statistics and Statistical Physics

by R.D. Rosenkrantz (Editor)
E. T. Jaynes: Papers on Probability, Statistics and Statistical Physics

E. T. Jaynes: Papers on Probability, Statistics and Statistical Physics

by R.D. Rosenkrantz (Editor)

Paperback(1989)

$189.00 
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Overview

The first six chapters of this volume present the author's 'predictive' or information theoretic' approach to statistical mechanics, in which the basic probability distributions over microstates are obtained as distributions of maximum entropy (Le. , as distributions that are most non-committal with regard to missing information among all those satisfying the macroscopically given constraints). There is then no need to make additional assumptions of ergodicity or metric transitivity; the theory proceeds entirely by inference from macroscopic measurements and the underlying dynamical assumptions. Moreover, the method of maximizing the entropy is completely general and applies, in particular, to irreversible processes as well as to reversible ones. The next three chapters provide a broader framework - at once Bayesian and objective - for maximum entropy inference. The basic principles of inference, including the usual axioms of probability, are seen to rest on nothing more than requirements of consistency, above all, the requirement that in two problems where we have the same information we must assign the same probabilities. Thus, statistical mechanics is viewed as a branch of a general theory of inference, and the latter as an extension of the ordinary logic of consistency. Those who are familiar with the literature of statistics and statistical mechanics will recognize in both of these steps a genuine 'scientific revolution' - a complete reversal of earlier conceptions - and one of no small significance.

Product Details

ISBN-13: 9780792302131
Publisher: Springer Netherlands
Publication date: 04/30/1989
Series: Synthese Library , #158
Edition description: 1989
Pages: 458
Product dimensions: 6.10(w) x 9.25(h) x 0.36(d)

Table of Contents

1. Introductory Remarks.- 2. Information Theory and Statistical Mechanics, I (1957).- 3. Information Theory and Statistical Mechanics, II (1957).- 4. Brandeis Lectures (1963).- 5. Gibbs vs Boltzmann Entropies (1965).- 6. Delaware Lecture (1967).- 7. Prior Probabilities (1968).- 8. The Well-Posed Problem (1973).- 9. Confidence Intervals vs Bayesian Intervals (1976).- 10. Where Do We Stand on Maximum Entropy? (1978).- 11. Concentration of Distributions at Entropy Maxima (1979).- 12. Marginalization and Prior Probabilities (1980).- 13. What is the Question? (1981).- 14. The Minimum Entropy Production Principle (1980).- Supplementary Bibliography.
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