Biohealthmatics.com The 24th annual conference TEPR 2008 will open its doors on May 19, 2008 at the Fort Lauderdale Convention Center to more than 500 speakers, close to 5,000 attendees, and approximately 200 exhibitors.
advertisement
Biohealthmatics Centers
Home
Jobs Search
Career Center
Networking Center
Company Profiles
Knowledge Center
Industry News
Web Directory
Industry Books
Featured Articles

Biohealthmatics.com....linking professionals
advertisement

Join Us

Link To Us





Model Selection and Multi-Model Inference

by Kenneth P. Burnham, David Anderson

Publisher: Springer
Publication Date: Thursday, December 04, 2003
Number of Pages: 496
ISBN: 0387953647


Book Summary:
The second edition of this book is unique in that it focuses on methods for making formal statistical inference from all the models in an a priori set (Multi-Model Inference). A philosophy is presented for model-based data analysis and a general strategy outlined for the analysis of empirical data. The book invites increased attention on a priori science hypotheses and modeling. 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 as an estimator of expected, relative Kullback-Leibler information. This leads to Akaike's Information Criterion (AIC) and various extensions. These methods are relatively simple and easy to use in practice, but based on deep statistical theory. 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. The book presents several new ways to incorporate model selection uncertainty into parameter estimates and estimates of precision. An array of challenging examples is given to illustrate various technical issues. This is an applied book written primarily for biologists and statisticians wanting to make inferences from multiple models and is suitable as a graduate text or as a reference for professional analysts.


advertisement

Book Reviews

Post a book review for this title

No reviews for this title. Be the first to post a review.

 

More Biotechnology BooksMore Biotechnology Books ...

 
 

 

 

 

   
Copyright © 2007 Biohealthmatics.com. All Rights Reserved. Contact Us - About Us - Privacy Policy - Terms & Conditions - Resources
Can't find what you are looking for? View our Site Map

Last Updated: 24 November 2007.