A Maximin $\Phi_{p}$-Efficient Design for Multivariate GLM
Yiou Li, Lulu Kang, Xinwei Deng

TL;DR
This paper introduces a new Maximin $\
Contribution
It proposes a novel Maximin $\
Findings
The Mm-$\Phi_p$ design maximizes minimum efficiency under model uncertainties.
An efficient algorithm with proven convergence for constructing the design is developed.
Numerical examples demonstrate the effectiveness of the proposed design.
Abstract
Experimental designs for a generalized linear model (GLM) often depend on the specification of the model, including the link function, the predictors, and unknown parameters, such as the regression coefficients. To deal with uncertainties of these model specifications, it is important to construct optimal designs with high efficiency under such uncertainties. Existing methods such as Bayesian experimental designs often use prior distributions of model specifications to incorporate model uncertainties into the design criterion. Alternatively, one can obtain the design by optimizing the worst-case design efficiency with respect to uncertainties of model specifications. In this work, we propose a new Maximin -Efficient (or Mm- for short) design which aims at maximizing the minimum -efficiency under model uncertainties. Based on the theoretical properties of the…
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