Abstract
We evaluate the ability of machine learning to predict whether a hypothetical crystal structure can be synthesized and explain those predictions to scientists. Fine-tuned large language models (LLMs) trained on a human-readable text description of the target crystal structure perform comparably to previous bespoke convolutional graph neural network methods, but better prediction quality can be achieved by training a positive-unlabeled learning model on a text-embedding representation of the structure. An LLM-based workflow can then be used to generate human-readable explanations for the types of factors governing synthesizability, extract the underlying physical rules, and assess the veracity of those rules. These text-based models can be adapted to specialized cases where less data exists by transfer learning, demonstrated for the case of perovskites.
Supplementary materials
Title
Supporting Information
Description
Description of data preparation, model construction and training, evaluation metric, ablation studies, explanation, explanation veracity assessment.
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