Bayesian Inference in Statistical Analysis
โ Scribed by George E. P. Box, George C. Tiao
- Publisher
- John Wiley & Sons
- Year
- 1992 (1973
- Tongue
- English
- Leaves
- 600
- Series
- Wiley classic library
- Edition
- reprint
- Category
- Library
No coin nor oath required. For personal study only.
โฆ Table of Contents
Preface ......Page 4
Contents ......Page 7
1 Nature of Bayesian inference ......Page 15
2 Standard normal theory inference problems ......Page 90
3 Bayesian assessment of assumptions 1. Effect of non-normality ......Page 163
4 Bayesian assessment of assumptions 2. Comparison of variances ......Page 217
5 Random effect models ......Page 258
6 Analysis of cross classification designs ......Page 331
7 Inference about means with information from more than one source ......Page 383
8 Some aspects of multivariate analysis ......Page 435
9 Estimation of common regression coefficients ......Page 492
10 Transformation of data ......Page 536
Tables ......Page 567
References ......Page 585
Author index ......Page 595
Subject index ......Page 597
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