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The Estimation Of Probabilities: An Essay on Modern Bayesian Methods

The Estimation Of Probabilities: An Essay on Modern Bayesian Methods

Current price: $25.00
Publication Date: March 17th, 2003
Publisher:
The MIT Press
ISBN:
9780262570152
Pages:
109
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Description

The problem of how to estimate probabilities has interested philosophers, statisticians, actuaries, and mathematicians for a long time. It is currently of interest for automatic recognition, medical diagnosis, and artificial intelligence in general. This monograph reviews existing methods, including those that are new or have not been written up in a connected manner.

The problem of how to estimate probabilities has interested philosophers, statisticians, actuaries, and mathematicians for a long time. It is currently of interest for automatic recognition, medical diagnosis, and artificial intelligence in general. The main purpose of this monograph is to review existing methods, especially those that are new or have not been written about in an organized way. The need for nontrivial theory arises because our samples are usually too small for us to rely exclusively on the frequency definition of probability. Most of the techniques described in this book depend on a modern Bayesian approach. The maximum-entropy principle, also relevant to this discussion, is used in the last chapter. It is hoped that the book will stimulate further work in a field whose importance will increasingly be recognized.

Methods for estimating probabilities are related to another part of statistics, namely, significance testing, and example of this relationship are also presented.

Many readers will be persuaded by this work that it is necessary to make use of a theory of subjective probability in order to estimate physical probabilities and also that a useful idea is that of a hierarchy of three types of probability which can sometimes be identified with physical, logical, and subjective probabilities.

About the Author

Irving Good was University Distinguished Professor of Statistics at Virginia Polytechnic Institute and State University as well as an adjunct professor of the Center for the Study of Science in Society and an adjunct professor of Philosophy.