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D-OPTIMAL DESIGNS WITH ORDERED CATEGORICAL DATA

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posted on 2017-11-10, 00:00 authored by J Yang, LP Tong, A Mandal
Cumulative link models have been widely used for ordered categorical responses. Uniform allocation of experimental units is commonly used in practice, but often suffers from a lack of efficiency. We consider D-optimal designs with ordered categorical responses and cumulative link models. For a predetermined set of design points, we derive the necessary and sufficient conditions for an allocation to be locally D-optimal and develop efficient algorithms for obtaining approximate and exact designs. We prove that the number of support points in a minimally supported design only depends on the number of predictors, which can be much less than the number of parameters in the model. We show that a D-optimal minimally supported allocation in this case is usually not uniform on its support points. In addition, we provide EW D-optimal designs as a highly efficient surrogate to Bayesian D-optimal designs. Both of them can be much more robust than uniform designs.

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Publisher Statement

"This is a copy of an article published in the STATISTICA SINICA © 2017 STATISTICA SINICA"

Publisher

STATISTICA SINICA

issn

1017-0405

Issue date

2017-10-01

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