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arxiv:2502.15483

MoMa: A Modular Deep Learning Framework for Material Property Prediction

Published on Feb 21, 2025
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Abstract

MoMa, a modular deep learning framework, enhances material property prediction by training specialized modules and adaptively composing them for diverse tasks, achieving superior performance across datasets.

Deep learning methods for material property prediction have been widely explored to advance materials discovery. However, the prevailing pre-train then fine-tune paradigm often fails to address the inherent diversity and disparity of material tasks. To overcome these challenges, we introduce MoMa, a Modular framework for Materials that first trains specialized modules across a wide range of tasks and then adaptively composes synergistic modules tailored to each downstream scenario. Evaluation across 17 datasets demonstrates the superiority of MoMa, with a substantial 14% average improvement over the strongest baseline. Few-shot and continual learning experiments further highlight MoMa's potential for real-world applications. Pioneering a new paradigm of modular material learning, MoMa will be open-sourced to foster broader community collaboration.

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