Robust prediction and extrapolation designs for censored data |
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Authors: | Xiaojian Xu |
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Affiliation: | Department of Mathematics, Brock University, St. Catharines, Ontario, Canada L2S 3A1 |
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Abstract: | In this paper we present the construction of robust designs for a possibly misspecified generalized linear regression model when the data are censored. The minimax designs and unbiased designs are found for maximum likelihood estimation in the context of both prediction and extrapolation problems. This paper extends preceding work of robust designs for complete data by incorporating censoring and maximum likelihood estimation. It also broadens former work of robust designs for censored data from others by considering both nonlinearity and much more arbitrary uncertainty in the fitted regression response and by dropping all restrictions on the structure of the regressors. Solutions are derived by a nonsmooth optimization technique analytically and given in full generality. A typical example in accelerated life testing is also demonstrated. We also investigate implementation schemes which are utilized to approximate a robust design having a density. Some exact designs are obtained using an optimal implementation scheme. |
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Keywords: | primary 62K05, 62F35 secondary 62J12 |
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