3D Denoisers Are Good 2D Teachers: Molecular Pretraining via Denoising and Cross-Modal Distillation

Authors

  • Sungjun Cho University of Wisconsin-Madison
  • Dae-Woong Jeong LG AI Research
  • Sung Moon Ko LG AI Research
  • Jinwoo Kim Korea Advanced Institute of Science and Technology
  • Sehui Han LG AI Research
  • Seunghoon Hong Korea Advanced Institute of Science and Technology
  • Honglak Lee LG AI Research
  • Moontae Lee LG AI Research University of Illinois Chicago

DOI:

https://doi.org/10.1609/aaai.v39i1.31986

Abstract

Pretraining molecular representations from large unlabeled data is essential for molecular property prediction due to the high cost of obtaining ground-truth labels. While there exist various 2D graph-based molecular pretraining approaches, these methods struggle to show statistically significant gains in predictive performance. Recent work have thus instead proposed 3D conformer-based pretraining under the task of denoising, leading to promising results. During downstream finetuning, however, models trained with 3D conformers require accurate atom-coordinates of previously unseen molecules, which are computationally expensive to acquire at scale. In this paper, we propose a simple solution of denoise-and-distill (D&D), a self-supervised molecular representation learning method that pretrains a 2D graph encoder by distilling representations from a 3D denoiser. With denoising followed by cross-modal knowledge distillation, our approach enjoys use of knowledge obtained from denoising as well as painless application to downstream tasks with no access to 3D conformers. Experiments on real-world molecular property prediction datasets show that the graph encoder trained via D&D can infer 3D information based on the 2D graph and shows superior performance and label-efficiency against previous methods.

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Published

2025-04-11

How to Cite

Cho, S., Jeong, D.-W., Ko, S. M., Kim, J., Han, S., Hong, S., … Lee, M. (2025). 3D Denoisers Are Good 2D Teachers: Molecular Pretraining via Denoising and Cross-Modal Distillation. Proceedings of the AAAI Conference on Artificial Intelligence, 39(1), 110–118. https://doi.org/10.1609/aaai.v39i1.31986

Issue

Section

AAAI Technical Track on Application Domains