统计决策理论和贝叶斯分析

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统计决策理论和贝叶斯分析

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ISBN: 9787506271813
作者: James O.Berger
出版社: 世界图书出版公司
发行时间: 2004 -11
丛书: Springer Series in Statistics 影印版
装订: 简裝本
价格: 88.00元
页数: 617

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James O.Berger   

简介

The relationships (both conceptual and mathematical) between Bayesian analysis and statistical decision theory are so strong that it is somewhat unnatural to learn one without the other. Nevertheless, major portions of each have developed separately. On the Bayesian side, there is an extensively developed Bayesian theory of statistical inference (both subjective and objective versions). This theory recognizes the importance of viewing statistical analysis conditionally (i.e., treating observed data as known rather than unknown), even when no loss function is to be incorporated into the analysis. There is also a well-developed (frequentist) decision theory, which avoids formal utilization of prior distributions and seeks to provide a foundation for frequentist statistical theory. Although the central thread of the book will be Bayesian decision theory, both Bayesian inference and non-Bayesian decision theory will be extensively discussed. Indeed, the book is written so as to allow, say, the teaching of a course on either subject separately.

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