English

Building informative materials datasets beyond targeted objectives

Materials Science 2026-05-07 v1 Artificial Intelligence Databases Machine Learning Applications

Abstract

Materials science data collection can be expensive, making the reuse and long-term utility of datasets critical important for future discovery campaigns. In practice, researchers prioritize a subset of properties due to research interests. However, ignoring a subset of outcomes in data collection campaigns potentially generate datasets poorly suited for future learning tasks. Here, we present a framework for dataset construction that maximizes informativeness for target properties of interest while preserving performance on untargeted ones. Our approach uses diversity-aware selection to ensure broad coverage of the materials space. In noisy experimental dataset construction, we find that without our diversity-aware framework, prediction performance on untargeted properties can degrade by up to 40% relative to random sampling, whereas applying our framework yields improvements of up to 10% . For targeted properties, performance can degrade with respect to random sampling by up to 12.5% without diversity, while our framework achieves gains of up to 25%. Incorporating diversity into dataset construction not only preserves informativeness for the targeted properties, but also improves materials coverage for potential future objectives. As a result, the constructed datasets remain broadly informative across considered and unconsidered outcomes, ensuring unbiased quality entries and mitigating cold-start limitations in subsequent modeling and discovery campaigns.

Keywords

Cite

@article{arxiv.2605.05104,
  title  = {Building informative materials datasets beyond targeted objectives},
  author = {Rafael Espinosa Castañeda and Ashley Dale and Hongchen Wang and Yonatan Kurniawan and Hao Wan and Runze Zhang and Adji Bousso Dieng and Kangming Li and Jason Hattrick-Simpers},
  journal= {arXiv preprint arXiv:2605.05104},
  year   = {2026}
}
R2 v1 2026-07-01T12:53:09.750Z