Expanding the Applicability Domain of Machine Learning Model for Advancements in Electrochemical Material Discovery
Author
Boonpalit K. Kinchagawat J. Namuangruk S.
Affiliations
School of Information Science and Technology Vidyasirimedhi Institute of Science and Technology (VISTEC) Wangchan Valley 555 Moo 1 Payupnai Wangchan Rayong 21210 Thailand; National Nanotechnology Center (NANOTEC) National Science and Technology Development Agency (NSTDA) 111 Innovation Cluster 2 Thailand Science Park Khlong Nueng Khlong Luang Pathum Thani 12120 Thailand
Type
Article
Source Title
ChemElectroChem
ISSN
21960216
Year
2024
Open Access
All Open Access Gold
Publisher
John Wiley and Sons Inc
DOI
10.1002/celc.202300681
Abstract
Machine learning has gained considerable attention in the material science domain and helped discover advanced materials for electrochemical applications. Numerous studies have demonstrated its potential to reduce the resources required for material screening. However a significant proportion of these studies have adopted a supervised learning approach which entails the laborious task of constructing random training databases and does not always ensure the model憇 reliability while screening unseen materials. Herein we evaluate the limitations of supervised machine learning from the perspective of the applicability domain. The applicability domain of a model is the region in chemical space where the structure-property relationship is covered by the training set so that the model can give reliable predictions. We review methods that have been developed to overcome such limitations such as the active learning framework and self-supervised learning. ? 2024 The Authors. ChemElectroChem published by Wiley-VCH GmbH.