English

Nearly Optimal Subdata Selection

Methodology 2026-04-28 v1 Machine Learning Machine Learning

Abstract

When, in terms of the number of data points, the size of a dataset exceeds available computing resources, or when labeling is expensive, an attractive solution consists of selecting only some of the data points (subdata) for further consideration. A central question for selecting subdata of size nn from NN available data points is which nn points to select. While an answer to this question depends on the objective, one approach for a parametric model and a focus on parameter estimation is to select subdata that retains maximal information. Identifying such subdata is a classical NP-hard problem due to its inherent discreteness. Based on optimal approximate design theory, we develop a new methodology for information-based subdata selection, resulting in subdata that approaches the optimal solution. To achieve this, we develop a novel algorithm that applies to a general model, accommodates arbitrary choices of NN and nn, and supports multiple optimality criteria, and we prove its convergence. Moreover, the new methodology facilitates an assessment of the efficiency of subdata selected by any method by obtaining tight lower and upper bounds for the efficiency. We show that the subdata obtained through the new methodology is highly efficient and outperforms all existing methods.

Keywords

Cite

@article{arxiv.2604.23930,
  title  = {Nearly Optimal Subdata Selection},
  author = {Min Yang and Wei Zheng and John Stufken and Ming-Chung Chang and Ting Tian and Xueqin Wang},
  journal= {arXiv preprint arXiv:2604.23930},
  year   = {2026}
}