On Data Imbalance in Molecular Property Prediction with Pre-training
Limin Wang, Masatoshi Hanai, Toyotaro Suzumura, Shun Takashige,, Kenjiro Taura

TL;DR
This paper addresses data imbalance issues in molecular property prediction with pre-training, proposing a modified loss function to improve model accuracy and reduce bias caused by uneven data distribution.
Contribution
It introduces a novel imbalance compensation technique for pre-training in molecular property prediction, enhancing accuracy over existing methods.
Findings
Improved prediction accuracy with the proposed loss function.
Effective mitigation of data bias in pre-training.
Enhanced model robustness on benchmark datasets.
Abstract
Revealing and analyzing the various properties of materials is an essential and critical issue in the development of materials, including batteries, semiconductors, catalysts, and pharmaceuticals. Traditionally, these properties have been determined through theoretical calculations and simulations. However, it is not practical to perform such calculations on every single candidate material. Recently, a combination method of the theoretical calculation and machine learning has emerged, that involves training machine learning models on a subset of theoretical calculation results to construct a surrogate model that can be applied to the remaining materials. On the other hand, a technique called pre-training is used to improve the accuracy of machine learning models. Pre-training involves training the model on pretext task, which is different from the target task, before training the model…
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Taxonomy
TopicsMachine Learning in Materials Science · Computational Drug Discovery Methods · Text and Document Classification Technologies
