Knowledge-Reuse Transfer Learning Methods in Molecular and Material Science

arXiv:2403.12982v13 citationsh-index: 17
Originality Synthesis-oriented
AI Analysis

This is an incremental review that summarizes existing transfer learning approaches for researchers in molecular and material science facing data scarcity issues.

The paper reviews transfer learning methods to address the challenge of limited data in molecular and material science, highlighting their potential to reduce data requirements and enhance model performance for discovering advanced materials.

Molecules and materials are the foundation for the development of modern advanced industries such as energy storage systems and semiconductor devices. However, traditional trial-and-error methods or theoretical calculations are highly resource-intensive, and extremely long R&D (Research and Development) periods cannot meet the urgent need for molecules/materials in industrial development. Machine learning (ML) methods based on big data are expected to break this dilemma. However, the difficulty in constructing large-scale datasets of new molecules/materials due to the high cost of data acquisition and annotation limits the development of machine learning. The application of transfer learning lowers the data requirements for model training, which makes transfer learning stand out in researches addressing data quality issues. In this review, we summarize recent advances in transfer learning related to molecular and materials science. We focus on the application of transfer learning methods for the discovery of advanced molecules/materials, particularly, the construction of transfer learning frameworks for different systems, and how transfer learning can enhance the performance of models. In addition, the challenges of transfer learning are also discussed.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes