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ARTÍCULO

A comparison of general-purpose optimization algorithms for finding optimal approximate experimental designs

Autores: Garcia-Rodenas, R. (Autor de correspondencia); Garcia-Garcia, J. C.; López Fidalgo, Jesús Fernando; Martin-Baos, J. A.; Wong, W. K.
Título de la revista: COMPUTATIONAL STATISTICS AND DATA ANALYSIS
ISSN: 0167-9473
Volumen: 144
Páginas: 106844
Fecha de publicación: 2020
Resumen:
Several common general purpose optimization algorithms are compared for finding A- and D-optimal designs for different types of statistical models of varying complexity, including high dimensional models with five and more factors. The algorithms of interest include exact methods, such as the interior point method, the Nelder Mead method, the active set method, the sequential quadratic programming, and metaheuristic algorithms, such as particle swarm optimization, simulated annealing and genetic algorithms. Several simulations are performed, which provide general recommendations on the utility and performance of each method, including hybridized versions of metaheuristic algorithms for finding optimal experimental designs. A key result is that general-purpose optimization algorithms, both exact methods and metaheuristic algorithms, perform well for finding optimal approximate experimental designs. (C) 2019 Elsevier B.V. All rights reserved.
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