Efficient computational algorithms for approximate optimal designs
Abstract
In this paper, we propose two simple yet efficient computational algorithms to obtain approximate optimal designs for multi-dimensional linear regression on a large variety of design spaces. We focus on the two commonly used optimal criteria, - and -optimal criteria. For -optimality, we provide an alternative proof for the monotonic convergence for -optimal criterion and propose an efficient computational algorithm to obtain the approximate -optimal design. We further show that the proposed algorithm converges to the -optimal design, and then prove that the approximate -optimal design converges to the continuous -optimal design under certain conditions. For -optimality, we provide an efficient algorithm to obtain approximate -optimal design and conjecture the monotonicity of the proposed algorithm. Numerical comparisons suggest that the proposed algorithms perform well and they are comparable or superior to some existing algorithms.
Cite
@article{arxiv.2102.12676,
title = {Efficient computational algorithms for approximate optimal designs},
author = {Jiangtao Duan and Wei Gao and Yanyuan Ma and Hon Keung Tony Ng},
journal= {arXiv preprint arXiv:2102.12676},
year = {2021}
}