MTRL-SCILGNov 21, 2024

Assessing data-driven predictions of band gap and electrical conductivity for transparent conducting materials

arXiv:2411.14034v11 citationsh-index: 83
Originality Synthesis-oriented
AI Analysis

This work addresses the problem of accelerating material discovery for industrial applications like semiconductors, but it is incremental as it builds on existing ML methods with new data and evaluation schemes.

The study tackled the challenge of using machine learning to discover new transparent conducting materials (TCMs) by creating experimental databases and evaluating SOTA models, demonstrating that ML can identify overlooked candidates, though it tends to favor compositions similar to training data.

Machine Learning (ML) has offered innovative perspectives for accelerating the discovery of new functional materials, leveraging the increasing availability of material databases. Despite the promising advances, data-driven methods face constraints imposed by the quantity and quality of available data. Moreover, ML is often employed in tandem with simulated datasets originating from density functional theory (DFT), and assessed through in-sample evaluation schemes. This scenario raises questions about the practical utility of ML in uncovering new and significant material classes for industrial applications. Here, we propose a data-driven framework aimed at accelerating the discovery of new transparent conducting materials (TCMs), an important category of semiconductors with a wide range of applications. To mitigate the shortage of available data, we create and validate unique experimental databases, comprising several examples of existing TCMs. We assess state-of-the-art (SOTA) ML models for property prediction from the stoichiometry alone. We propose a bespoke evaluation scheme to provide empirical evidence on the ability of ML to uncover new, previously unseen materials of interest. We test our approach on a list of 55 compositions containing typical elements of known TCMs. Although our study indicates that ML tends to identify new TCMs compositionally similar to those in the training data, we empirically demonstrate that it can highlight material candidates that may have been previously overlooked, offering a systematic approach to identify materials that are likely to display TCMs characteristics.

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