Bayesian Data Analysis (Texts in Statistical Science Series) by Andrew Gelman

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Textbook (Hardcover - Second Edition)

  • 668pp
  • Sales Rank: 100,915

Textbook Information

  • ISBN-13: 9781584883883
  • Edition Description: Second Edition
  • Edition Number: 2
  • Pub. Date: July 2003
  • Publisher: Taylor & Francis, Inc.
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Product Details

  • Pub. Date: July 2003
  • Publisher: Taylor & Francis, Inc.
  • Format: Textbook Hardcover, 668pp
  • Sales Rank: 100,915

Synopsis

This graduate textbook introduces the fundamentals of Bayesian inference and modeling, describes methods for computing posterior distributions in hierarchical models, and explores a few standard linear regression and generalized linear models. The second edition adds chapters on nonlinear models and decision analysis. Annotation ©2003 Book News, Inc., Portland, OR

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Bayesian Data Analysis (Texts in Statistical Science Series)by Anonymous

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November 21, 2005: I did not care for this text. It is very chatty making it unclear as to what is actually going on mathematically and computationally. It is not that the text is unreadable or poorly written, but you will not read the text and then be able to solve math or data analysis problems. The authors talk about much, but may actually never formally set up a problem. If you are not already proficient in Bayesian statistics and linear models, you will have a hard time getting anything beyond broad ideas.