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A study on log-density ratio in logistic regression model for binary data  

Kahng, Myung-Wook (Department of Statistics, Sookmyung Women's University)
Publication Information
Journal of the Korean Data and Information Science Society / v.22, no.1, 2011 , pp. 107-113 More about this Journal
Abstract
We present methods for studying the log-density ratio, which allow us to select which predictors are needed, and how they should be included in the logistic regression model. Under multivariate normal distributional assumptions, we investigate the form of the log-density ratio as a function of many predictors. The linear, quadratic and crossproduct terms are required in general. If two covariance matrices are equal, then the crossproduct and quadratic terms are not needed. If the variables are uncorrelated, we do not need the crossproduct terms, but we still need the linear and quadratic terms.
Keywords
Binary regression; kernel mean function; log-density ratio; log-odds ratio; logistic regression;
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Times Cited By KSCI : 4  (Citation Analysis)
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