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Confidence, Likelihood, Probability

Confidence, Likelihood, Probability
Statistical Inference with Confidence Distributions

Part of Cambridge Series in Statistical and Probabilistic Mathematics

  • Date Published: May 2016
  • availability: Available
  • format: Hardback
  • isbn: 9780521861601

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About the Authors
  • This lively book lays out a methodology of confidence distributions and puts them through their paces. Among other merits, they lead to optimal combinations of confidence from different sources of information, and they can make complex models amenable to objective and indeed prior-free analysis for less subjectively inclined statisticians. The generous mixture of theory, illustrations, applications and exercises is suitable for statisticians at all levels of experience, as well as for data-oriented scientists. Some confidence distributions are less dispersed than their competitors. This concept leads to a theory of risk functions and comparisons for distributions of confidence. Neyman–Pearson type theorems leading to optimal confidence are developed and richly illustrated. Exact and optimal confidence distribution is the gold standard for inferred epistemic distributions. Confidence distributions and likelihood functions are intertwined, allowing prior distributions to be made part of the likelihood. Meta-analysis in likelihood terms is developed and taken beyond traditional methods, suiting it in particular to combining information across diverse data sources.

    • Defines confidence inference and develops its basic theory
    • Includes many worked examples of/with confidence inference, with emphasis on the confidence curve as a good format of reporting
    • Presents methods for meta-analysis and other forms of combining information, which goes beyond present day theory based on approximate normality
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    Reviews & endorsements

    'This book presents a detailed and wide-ranging account of an approach to inference that moves the discipline towards increased cohesion, avoiding the artificial distinction between testing and estimation. Innovative and thorough, it is sure to have an impact both in the foundations of inference and in a wide range of practical applications of inference.' Nancy Reid, University Professor of Statistical Sciences, University of Toronto

    'I recommend this book very enthusiastically to any researcher interested in learning more about advanced likelihood theory, based on concepts like confidence distributions and fiducial distributions, and their links with other areas. The book explains in a very didactical way the concepts, their use, their interpretation, etc., illustrated by an impressive number of examples and data sets from a wide range of areas in statistics.' Ingrid Van Keilegom, Université Catholique de Louvain

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    Product details

    • Date Published: May 2016
    • format: Hardback
    • isbn: 9780521861601
    • length: 511 pages
    • dimensions: 260 x 184 x 31 mm
    • weight: 1.09kg
    • contains: 147 b/w illus. 17 tables 100 exercises
    • availability: Available
  • Table of Contents

    1. Confidence, likelihood, probability: an invitation
    2. Interference in parametric models
    3. Confidence distributions
    4. Further developments for confidence distribution
    5. Invariance, sufficiency and optimality for confidence distributions
    6. The fiducial argument
    7. Improved approximations for confidence distributions
    8. Exponential families and generalised linear models
    9. Confidence distributions in higher dimensions
    10. Likelihoods and confidence likelihoods
    11. Confidence in non- and semiparametric models
    12. Predictions and confidence
    13. Meta-analysis and combination of information
    14. Applications
    15. Finale: summary, and a look into the future.

  • Authors

    Tore Schweder, Universitetet i Oslo
    Tore Schweder is a Professor of Statistics in the Department of Economics and at the Centre for Ecology and Evolutionary Synthesis at the University of Oslo.

    Nils Lid Hjort, Universitetet i Oslo
    Nils Lid Hjort is Professor of Mathematical Statistics in the Department of Mathematics at the University of Oslo.

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