Testing for lack of fit in linear multiresponse models based on exact or near replicates |
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Authors: | Martin S. Levy James W. Neill |
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Affiliation: | 1. Department of Quantitative Analysis and Information Systems , University of Cincinnati , Cincinnati, Ohio, 45221;2. Department of Statistics , Kansas State University , Manhattan, Kansas, 66506 |
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Abstract: | Three procedures for testing the adequacy of a proposed linear multiresponse regression model against unspecified general alternatives are considered. The model has an error structure with a matrix normal distribution which allows the vector of responses for a particular run to have an unknown covariance matrix while the responses for different runs are uncorrelated. Furthermore, each response variable may be modeled by a separate design matrix. Multivariate statistics corresponding to the classical univariate lack of fit and pure error sums of squares are defined and used to determine the multivariate lack of fit tests. A simulation study was performed to compare the power functions of the test procedures in the case of replication. Generalizations of the tests for the case in which there are no independent replicates on all responses are also presented. |
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Keywords: | multivariate regression model adequacy nonreplication multiple design linear model |
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