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Statistical Inference Based on Divergence Measures
Contributor(s): Pardo, Leandro (Author)
ISBN: 1584886005     ISBN-13: 9781584886006
Publisher: CRC Press
OUR PRICE:   $171.00  
Product Type: Hardcover - Other Formats
Published: October 2005
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Temporarily out of stock - Will ship within 2 to 5 weeks
Annotation: Organized in systematic way, Statistical Inference Based on Divergence Measures presents classical problems of statistical inference, such as estimation and hypothesis testing, on the basis of measures of entropy and divergence with applications to multinomial and generation populations. On the basis of divergence measures, this book introduces minimum divergence estimators as well as divergence test statistics and compares them to the classical maximum likelihood estimator, chi-square test statistics, and the likelihood ratio test in different statistical problems. The text includes over 120 exercises with solutions, making it ideal for students with a basic knowledge of statistical methods.
Additional Information
BISAC Categories:
- Mathematics | Probability & Statistics - Bayesian Analysis
Dewey: 519.54
LCCN: 2005049685
Series: Statistics, Textbooks and Monographs
Physical Information: 1.26" H x 6.42" W x 9.28" (1.79 lbs) 512 pages
 
Descriptions, Reviews, Etc.
Publisher Description:

The idea of using functionals of Information Theory, such as entropies or divergences, in statistical inference is not new. However, in spite of the fact that divergence statistics have become a very good alternative to the classical likelihood ratio test and the Pearson-type statistic in discrete models, many statisticians remain unaware of this powerful approach.

Statistical Inference Based on Divergence Measures explores classical problems of statistical inference, such as estimation and hypothesis testing, on the basis of measures of entropy and divergence. The first two chapters form an overview, from a statistical perspective, of the most important measures of entropy and divergence and study their properties. The author then examines the statistical analysis of discrete multivariate data with emphasis is on problems in contingency tables and loglinear models using phi-divergence test statistics as well as minimum phi-divergence estimators. The final chapter looks at testing in general populations, presenting the interesting possibility of introducing alternative test statistics to classical ones like Wald, Rao, and likelihood ratio. Each chapter concludes with exercises that clarify the theoretical results and present additional results that complement the main discussions.

Clear, comprehensive, and logically developed, this book offers a unique opportunity to gain not only a new perspective on some standard statistics problems, but the tools to put it into practice.