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Goodness-Of-Fit Statistics for Discrete Multivariate Data 1988 Edition
Contributor(s): Read, Timothy R. C. (Author), Cressie, Noel A. C. (Author)
ISBN: 038796682X     ISBN-13: 9780387966823
Publisher: Springer
OUR PRICE:   $52.24  
Product Type: Hardcover - Other Formats
Published: August 1988
Qty:
Additional Information
BISAC Categories:
- Mathematics | Probability & Statistics - Multivariate Analysis
Dewey: 519
LCCN: 88004648
Series: Springer Series in Statistics
Physical Information: 0.6" H x 6.31" W x 9.55" (1.06 lbs) 212 pages
 
Descriptions, Reviews, Etc.
Publisher Description:
The statistical analysis of discrete multivariate data has received a great deal of attention in the statistics literature over the past two decades. The develop- ment ofappropriate models is the common theme of books such as Cox (1970), Haberman (1974, 1978, 1979), Bishop et al. (1975), Gokhale and Kullback (1978), Upton (1978), Fienberg (1980), Plackett (1981), Agresti (1984), Goodman (1984), and Freeman (1987). The objective of our book differs from those listed above. Rather than concentrating on model building, our intention is to describe and assess the goodness-of-fit statistics used in the model verification part of the inference process. Those books that emphasize model development tend to assume that the model can be tested with one of the traditional goodness-of-fit tests 2 2 (e.g., Pearson's X or the loglikelihood ratio G ) using a chi-squared critical value. However, it is well known that this can give a poor approximation in many circumstances. This book provides the reader with a unified analysis of the traditional goodness-of-fit tests, describing their behavior and relative merits as well as introducing some new test statistics. The power-divergence family of statistics (Cressie and Read, 1984) is used to link the traditional test statistics through a single real-valued parameter, and provides a way to consolidate and extend the current fragmented literature. As a by-product of our analysis, a new 2 2 statistic emerges "between" Pearson's X and the loglikelihood ratio G that has some valuable properties.