Title of article :
Alternative modeling techniques for the quantal response data in mixture experiments
Author/Authors :
Kadri Ulas Akay&Müjgan Tez، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Abstract :
Mixture experiments are commonly encountered in many fields including chemical, pharmaceutical and
consumer product industries. Due to their wide applications, mixture experiments, a special study of
response surface methodology, have been given greater attention in both model building and determination
of designs compared with other experimental studies. In this paper, some new approaches are suggested
on model building and selection for the analysis of the data in mixture experiments by using a special
generalized linear models, logistic regression model, proposed by Chen et al. [7]. Generally, the special
mixture models, which do not have a constant term, are highly affected by collinearity in modeling the
mixture experiments. For this reason, in order to alleviate the undesired effects of collinearity in the
analysis of mixture experiments with logistic regression, a newmixture model is defined with an alternative
ratio variable. The deviance analysis table is given for standard mixture polynomial models defined by
transformations and special mixture models used as linear predictors. The effects of components on the
response in the restricted experimental region are given by using an alternative representation of Cox’s
direction approach. In addition, odds ratio and the confidence intervals of odds ratio are identified according
to the chosen reference and control groups.To compare the suggested models, some model selection criteria,
graphical odds ratio and the confidence intervals of the odds ratio are used. The advantage of the suggested
approaches is illustrated on tumor incidence data set.
Keywords :
Logistic regression models , the analysis of deviance table , Model selection , confidence intervals for the odds ratio , experiments with mixture , responsetrace plots
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS