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统计决策理论和贝叶斯分析(第2版)

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发表于2024-04-27

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出版社: 世界图书出版公司
ISBN:9787506271813
版次:1
商品编码:10175537
包装:平装
开本:24开
出版时间:2004-11-01
用纸:胶版纸
页数:617


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内容简介

  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.

目录

CHAPTER 1
Basic Concepts
1.1 Introduction
1.2 Basic Elements
1.3 Expected Loss, Decision Rules, and Risk
1.3.1 Bayesian Expected Loss
1.3.2 Frequentist Risk
1.4 Randomized Decision Rules
1.5 Decision Principles
1.5.1 The Conditional Bayes Decision Principle
1.5.2 Frequentist Decision Principles
1.6 Foundations
1.6.1 Misuse of Classical Inference Procedures
1.6.2 The Frequentist Perspective
1.6.3 The Conditional Perspective
1.6.4 The Likelihood Principle
1.6.5 Choosing a Paradigm or Decision Principle
1.7 Sufficient Statistics
1.8 Convexity
Exercises
CHAPTER 2 Utility and Loss
2.1 Introduction
2.2 Utility Theory
2.3 The Utility of Money
2.4 The Loss Function
2.4.1 Development from Utility Theory
2.4.2 Certain Standard Loss Functions
2.4.3 For Inference Problems
2.4.4 For Predictive Problems
2.4.5 Vector Valued Loss Functions
2.5 Criticisms
Exercises
CHAPTER 3 Prior Information and Subjective Probability
3.1 Subjective Probability
3.2 Subjective Determination of the Prior Density
3.3 Noninformative Priors
3.3.1 Introduction
3.3.2 Noninformative Priors for Location and Scale Problems
3.3.3 Noninformative Priors in General Settings
3.3.4 Discussion
3.4 Maximum Entropy Priors
3.5 Using the Marginal Distribution to Determine the Prior
3.5.1 The Marginal Distribution
3.5.2 Information About tn
3.5.3 Restricted Classes of Priors
3.5.4 The ML-II Approach to Prior Selection
3.5.5 The Moment Approach to Prior Selection
3.5.6 The Distance Approach to Prior Selection
3.5.7 Marginal Exchangeability
3.6 Hierarchical Priors
3.7 Criticisms
3.8 The Statisticians Role
Exercises
CHAPTER 4 Bayesian Analysis
4.1 Introduction
4.2 The Posterior Distribution
4.2.1 Definition and Determination
4.2.2 Conjugate Families
4.2.3 Improper Priors
4.3 Bayesian Inference
4.3.1 Estimation
4.3.2 Credible Sets
4.3.3 Hypothesis Testing
4.3.4 Predictive Inference
4.4 Bayesian Decision Theory
4.4.1 Posterior Decision Analysis
4.4.2 Estimation
4.4.3 Finite Action Problems and Hypothesis Testing
4.4.4 With Inference Losses
4.5 Empirical Bayes Analysis
4.5.1 Introduction
4.5.2 PEB For Normal Means--The Exchangeable Case
4.5.3 PEB For Normal Means--The General Case
4.5.4 Nonparametric Empirical Bayes Analysis
4.6 Hierarchical Bayes Analysis
4.6.1 Introduction
4.6.2 For Normal Means--The Exchangeable Case
4.6.3 For Normal Means--The General Case
4.6.4 Comparison with Empirical Bayes Analysis
4.7 Bayesian Robustness
4.7.1 Introduction
4.7.2 The Role of the Marginal Distribution
4.7.3 Posterior Robustness: Basic Concepts
4.7.4 Posterior Robustness: s-Contamination Class
4.7.5 Bayes Risk Robustness and Use of Frequentist Measures
4.7.6 Gamma-Minimax Approach
4.7.7 Uses of the Risk Function
4.7.8 Some Robust and Nonrobust Situations
4.7.9 Robust Priors
4.7.10 Robust Priors for Normal Means
4.7.11 Other Issues in Robustness
4.8 Admissibility of Bayes Rules and Long Run Evaluations
4.8.1 Admissibility of Bayes Rules
4.8.2 Admissibility of Generalized Bayes Rules
4.8.3 Inadmissibility and Long Run Evaluations
4.9 Bayesian Calculation
4.9.1 Numerical Integration
4.9.2 Monte Carlo Integration
4.9.3 Analytic Approximations
4.10 Bayesian Communication
4.10.1 Introduction
4.10.2 An Illustration: Testing a Point Null Hypothesis
4.11 Combining Evidence and Group Decisions
4.11.1 Combining Probabilistic Evidence
4.11.2 Combining Decision-Theoretic Evidence
4.11.3 Group Decision Making
4.12 Criticisms
4.12.1 Non-Bayesian Criticisms
4.12.2 Foundational Criticisms
Exercises
CHAPTER 5 Minimax Analysis
5.1 Introduction
5.2 Game Theory
5.2.1 Basic Elements
5.2.2 General Techniques for Solving Games
5.2.3 Finite Games
5.2.4 Games with Finite
5.2.5 The Supporting and Separating Hyperplane Theorems
5.2.6 The Minimax Theorem
5.3 Statistical Games
5.3.1 Introduction
5.3.2 General Techniques for Solving Statistical Games
5.3.3 Statistical Games with Finite
5.4 Classes of Minimax Estimators
5.4.1 Introduction
5.4.2 The Unbiased Estimator of Risk
5.4.3 Minimax Estimators of a Normal Mean Vector
5.4.4 Minimax Estimators of Poisson Means
5.5 Evaluation of the Minimax Principle
5.5.1 Admissibility of Minimax Rules
5.5.2 Rationality and the Minimax Principle
5.5.3 Comparison with the Bayesian Approach
5.5.4 The Desire to Act Conservatively
5.5.5 Minimax Regret
5.5.6 Conclusions
Exercises
CHAPTER 6 Invariance
6.1 Introduction
6.2 Formulation
6.2.1 Groups of Transformations
6.2.2 Invariant Decision Problems
6.2.3 Invariant Decision Rules
6.3 Location Parameter Problems
6.4 Other Examples of Invariance
6.5 Maximal lnvariants
6.6 Invariance and Noninformative Priors
6.6.1 Right and Left Invariant Haar Densities
6.6.2 The Best Invariant Rule
6.6.3 Confidence and Credible Sets
6.7 Invariance and Minimaxity
6.8 Admissibility of Invariant Rules
6.9 Conclusions
Exercises
CHAPTER 7 Preposterior and Sequential Analysis
7.1 Introduction
7.2 Optimal Fixed Sample Size
7.3 Sequential Analysis--Notation
7.4 Bayesian Sequential Analysis
7.4.1 Introduction
7.4.2 Notation
7.4.3 The Bayes Decision Rule
7.4.4 Constant Posterior Bayes Risk
7.4.5 The Bayes Truncated Procedure
7.4.6 Look Ahead Procedures
7.4.7 Inner Truncation
7.4.8 Approximating the Bayes Procedure and the Bayes Risk
7.4.9 Theoretical Results
7.4.10 Other Techniques for Finding a Bayes Procedure
7.5 The Sequential Probability Ratio Test
7.5.1 The SPRT as a Bayes Procedure
7.5.2 Approximating the Power Function and the Expected Sample Size
7.5.3 Accuracy of the Wald Approximations
7.5.4 Bayes Risk and Admissibility
7.5.5 Other Uses of the SPRT
7.6 Minimax Sequential Procedures
7.7 The Evidential Relevance of the Stopping Rule
7.7.1 Introduction
7.7.2 The Stopping Rule Principle
7.7.3 Practical Implications
7.7.4 Criticisms of the Stopping Rule Principle
7.7.5 Informative Stopping Rules
7.8 Discussion of Sequential Loss Functions
Exercises
CHAPTER 8 Complete and Essentially Complete Classes
8.1 Preliminaries
8.2 Complete and Essentially Complete Classes from Earlier Chapters
8.2.1 Decision Rules Based on a Sufficient Statistic
8.2.2 Nonrandomized Decision Rules
8.2.3 Finite O
8.2.4 The Neyman-Pearson Lemma
8.3 One-Sided Testing
8.4 Monotone Decision Problems
8.4.1 Monotone Multiple Decision Problems
8.4.2 Monotone Estimation Problems
8.5 Limits of Bayes Rules
8.6 Other Complete and Essentially Complete Classes of Tests
8.6.1 Two-Sided Testing
8.6.2 Higher Dimensional Results
8.6.3 Sequential Testing
8.7 Complete and Essentially Complete Classes in Estimation
8.7.1 Generalized Bayes Estimators
8.7.2 Identifying Generalized Bayes Estimators
8.8 Continuous Risk Functions
8.9 Proving Admissibility and Inadmissibility
8.9.1 Steins Necessary and Sufficient Condition for Admissibility
8.9.2 Proving Admissibility
8.9.3 Proving Inadmissibility
8.9.4 Minimal or Nearly Minimal Complete Classes
Exercises
APPENDIX 1 Common Statistical Densities
I Continuous
II Discrete
APPENDIX 2 Supplement to Chapter 4
I Definition and Properties of Hm
II Development of (4.121) and (4.122)
III Verification of Formula (4.123)
APPENDIX 3 Technical Arguments from Chapter 7
统计决策理论和贝叶斯分析(第2版) 下载 mobi epub pdf txt 电子书 格式

统计决策理论和贝叶斯分析(第2版) mobi 下载 pdf 下载 pub 下载 txt 电子书 下载 2024

统计决策理论和贝叶斯分析(第2版) 下载 mobi pdf epub txt 电子书 格式 2024

统计决策理论和贝叶斯分析(第2版) 下载 mobi epub pdf 电子书
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用户评价

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评分

  以上是我觉得较为好的两本,也是读得比较认真的两本。从贝叶斯理论的基本概念开始讲起,公式推导十分详细,还有非常丰富的实例以及相关理论的应用。 《贝叶斯网引论》最值得称道的一点是上面大部分的算法都给出了图示,也就是随着算法一次次迭代的过程,整个贝叶斯网络变化过程的图示,这样的算法才是读者真正能够看明白的算法。

评分

书很好,速度也很快,专业书籍值得一阅

评分

  James O.Berger《统计决策论及贝叶斯分析》

评分

双十一优惠好大,不错不错,有时间学习学习,

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不错的书,比较适合自己,内容很详细

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活动买的专业书

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活动买的专业书

评分

  陈晓平《贝叶斯方法与科学合理性:对休谟问题的思考》

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统计决策理论和贝叶斯分析(第2版) mobi epub pdf txt 电子书 格式下载 2024


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