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http://dx.doi.org/10.7465/jkdi.2017.28.5.1021

A comparison of models for the quantal response on tumor incidence data in mixture experiments  

Kim, Jung Il (Department of Information Statistics, Kangwon National University)
Publication Information
Journal of the Korean Data and Information Science Society / v.28, no.5, 2017 , pp. 1021-1026 More about this Journal
Abstract
Mixture experiments are commonly encountered in many fields including food, chemical and pharmaceutical industries. In mixture experiments, measured response depends on the proportions of the components present in the mixture and not on the amount of the mixture. Statistical analysis of the data from mixture experiments has mainly focused on a continuous response variable. In the example of quantal response data in mixture experiments, however, the tumor incidence data have been analyzed in Chen et al. (1996) to study the effects of 3 dietary components on the expression of mammary gland tumor. In this paper, we compared the logistic regression models with linear predictors such as second degree Scheffe polynomial model, Becker model and Akay model in terms of classification accuracy.
Keywords
Classification accuracy; logistic regression; mixture experiments; quantal response; second degree Scheffe polynomial model;
Citations & Related Records
Times Cited By KSCI : 3  (Citation Analysis)
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