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An algorithm based on Semidefinite Programming for finding minimax optimal designs

Please always quote using this URN: urn:nbn:de:0297-zib-66249
  • An algorithm based on a delayed constraint generation method for solving semi-infinite programs for constructing minimax optimal designs for nonlinear models is proposed. The outer optimization level of the minimax optimization problem is solved using a semidefinite programming based approach that requires the design space be discretized. A nonlinear programming solver is then used to solve the inner program to determine the combination of the parameters that yields the worst-case value of the design criterion. The proposed algorithm is applied to find minimax optimal designs for the logistic model, the flexible 4-parameter Hill homoscedastic model and the general nth order consecutive reaction model, and shows that it (i) produces designs that compare well with minimax $D-$optimal designs obtained from semi-infinite programming method in the literature; (ii) can be applied to semidefinite representable optimality criteria, that include the common A-, E-,G-, I- and D-optimality criteria; (iii) can tackle design problems with arbitrary linear constraints on the weights; and (iv) is fast and relatively easy to use.

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Metadaten
Author:Belmiro P.M. Duarte, Guillaume Sagnol, Weng Kee Wong
Document Type:ZIB-Report
Tag:Cutting plane algorithm; Design efficiency; Equivalence theorem; Model-based optimal design; Nonlinear programming
MSC-Classification:62-XX STATISTICS / 62Kxx Design of experiments [See also 05Bxx] / 62K05 Optimal designs
90-XX OPERATIONS RESEARCH, MATHEMATICAL PROGRAMMING / 90Cxx Mathematical programming [See also 49Mxx, 65Kxx] / 90C47 Minimax problems [See also 49K35]
Date of first Publication:2017/12/20
Series (Serial Number):ZIB-Report (18-01)
ISSN:1438-0064
Published in:Computational Statistics & Data Analysis
DOI:https://doi.org/10.1016/j.csda.2017.09.008
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