LGCHEM-PHAug 30, 2025

RoFt-Mol: Benchmarking Robust Fine-Tuning with Molecular Graph Foundation Models

arXiv:2509.00614v22 citationsh-index: 5
Originality Synthesis-oriented
AI Analysis

This work addresses fine-tuning robustness for molecular graph models, an incremental advance in a domain-specific area.

The paper tackled the problem of robust fine-tuning for molecular graph foundation models, which face challenges like overfitting and sparse labeling, by benchmarking eight fine-tuning methods and proposing ROFT-MOL, which improved performance across regression and classification tasks.

In the era of foundation models, fine-tuning pre-trained models for specific downstream tasks has become crucial. This drives the need for robust fine-tuning methods to address challenges such as model overfitting and sparse labeling. Molecular graph foundation models (MGFMs) face unique difficulties that complicate fine-tuning. These models are limited by smaller pre-training datasets and more severe data scarcity for downstream tasks, both of which require enhanced model generalization. Moreover, MGFMs must accommodate diverse objectives, including both regression and classification tasks. To better understand and improve fine-tuning techniques under these conditions, we classify eight fine-tuning methods into three mechanisms: weight-based, representation-based, and partial fine-tuning. We benchmark these methods on downstream regression and classification tasks across supervised and self-supervised pre-trained models in diverse labeling settings. This extensive evaluation provides valuable insights and informs the design of a refined robust fine-tuning method, ROFT-MOL. This approach combines the strengths of simple post-hoc weight interpolation with more complex weight ensemble fine-tuning methods, delivering improved performance across both task types while maintaining the ease of use inherent in post-hoc weight interpolation.

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