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Main Authors: Lin, Siting, Huang, Yifei, Yang, Jie
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2505.00629
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author Lin, Siting
Huang, Yifei
Yang, Jie
author_facet Lin, Siting
Huang, Yifei
Yang, Jie
contents Optimal designs can help experimenters obtain more accurate parameter estimates with reduced experimental time and cost. In this paper, we characterize the Expected Weighted (EW) D-optimal designs as robust designs against unknown parameter values for experiments under a general parametric model with discrete and continuous factors. When a pilot study is available, we recommend sample-based EW D-optimal designs for subsequent experiments. Otherwise, we recommend EW D-optimal designs under a prior distribution for model parameters. We propose an EW ForLion algorithm for finding EW D-optimal designs with mixed factors, and justify that the designs found by our algorithm are EW D-optimal. To facilitate potential users in practice, we also develop a rounding algorithm that converts an approximate design with mixed factors to exact designs with prespecified grid points and the total number of experimental units. By applying our algorithms for real experiments under multinomial logistic models or generalized linear models, we show that our designs are highly efficient with respect to locally D-optimal designs and more robust against parameter value misspecifications.
format Preprint
id arxiv_https___arxiv_org_abs_2505_00629
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Expected Weighted D-optimal Designs for Experiments with Mixed Factors
Lin, Siting
Huang, Yifei
Yang, Jie
Methodology
Statistics Theory
Optimal designs can help experimenters obtain more accurate parameter estimates with reduced experimental time and cost. In this paper, we characterize the Expected Weighted (EW) D-optimal designs as robust designs against unknown parameter values for experiments under a general parametric model with discrete and continuous factors. When a pilot study is available, we recommend sample-based EW D-optimal designs for subsequent experiments. Otherwise, we recommend EW D-optimal designs under a prior distribution for model parameters. We propose an EW ForLion algorithm for finding EW D-optimal designs with mixed factors, and justify that the designs found by our algorithm are EW D-optimal. To facilitate potential users in practice, we also develop a rounding algorithm that converts an approximate design with mixed factors to exact designs with prespecified grid points and the total number of experimental units. By applying our algorithms for real experiments under multinomial logistic models or generalized linear models, we show that our designs are highly efficient with respect to locally D-optimal designs and more robust against parameter value misspecifications.
title Expected Weighted D-optimal Designs for Experiments with Mixed Factors
topic Methodology
Statistics Theory
url https://arxiv.org/abs/2505.00629