Model selection and multimodel inference :a practical information-theoretic approach

  • 作者: Burnham, Kenneth P.
  • 其他作者: Anderson, David Raymond, , Burnham, Kenneth P.
  • 出版: New York : Springer ©2002.
  • 版本: 2nd ed.
  • 稽核項: 1 online resource (xxvi, 488 pages) :illustrations.
  • 標題: Biology , Biology Mathematical models. , Models, Statistical , NATURE , Reference. , SCIENCE Life Sciences -- Biology. , SCIENCE Life Sciences -- General. , NATURE Reference. , Mathematical models. , SCIENCE , Life SciencesGeneral. , Mathematical statistics. , Electronic books. , Life SciencesBiology.
  • ISBN: 6610009481 , 9786610009480
  • ISBN: 9780387953649 , 0387953647
  • 試查全文@TNUA:
  • 附註: Includes bibliographical references (pages 455-484) and index. 1. Introduction -- 2. Information and likelihood theory: a basis for model selection and inference -- 3. Basic use of the information-theoretic approach -- 4. Formal inference from more than one model: multimodel inference (MMI) -- 5. Monte Carlo insights and extended examples -- 6. Advanced issues and deeper insights -- 7. Statistical theory and numerical results -- 8. Summary.
  • 摘要: This book is unique in that it covers the philosophy of model-based data analysis and a strategy for the analysis of empirical data. The book introduces information theoretic approaches and focuses critical attention on a priori modeling and the selection of a good approximating model that best represents the inference supported by the data. Kullback-Leibler Information represents a fundamental quantity in science and is Hirotugu Akaike's basis for model selection. The maximized log-likelihood function can be bias-corrected to provide an estimate of expected, relative Kullback-Leibler information. This leads to Akaike's Information Criterion (AIC) and various extensions. These are relatively simple and easy to use in practice. The information theoretic approaches provide a unified and rigorous theory, an extension of likelihood theory, an important application of information theory, and are objective and practical to employ across a very wide class of empirical problems. Model selection, under the information theoretic approach presented here, attempts to identify the (likely) best model, orders the models from best to worst, and measures the plausibility ("calibration") that each model is really the best as an inference. Model selection methods are extended to allow inference from more than a single "best" model. The book presents several new approaches to estimating model selection uncertainty and incorporating selection uncertainty into estimates of precision. An array of examples is given to illustrate various technical issues. This is an applied book written primarily for biologists and statisticians using models for making inferences from empirical data. People interested in the empirical sciences will find this material useful as it offers an alternative to hypothesis testing and Bayesian
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  • 系統號: 005322329
  • 資料類型: 電子書
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