Agent Tuning & Optimization 相关度: 7/10

Sample Efficient Generative Molecular Optimization with Joint Self-Improvement

Serra Korkmaz, Adam Izdebski, Jonathan Pirnay, Rasmus Møller-Larsen, Michal Kmicikiewicz, Pankhil Gawade, Dominik G. Grimm, Ewa Szczurek
arXiv: 2602.10984v1 发布: 2026-02-11 更新: 2026-02-11

AI 摘要

提出一种联合自提升的分子优化方法,解决生成模型中的分布偏移和样本效率问题。

主要贡献

  • 提出联合生成-预测模型,缓解分布偏移
  • 设计自提升抽样方案,提升优化效率
  • 在分子优化基准测试中超越现有方法

方法论

结合生成模型与预测模型,并利用预测模型的指导,迭代优化生成模型。

原文摘要

Generative molecular optimization aims to design molecules with properties surpassing those of existing compounds. However, such candidates are rare and expensive to evaluate, yielding sample efficiency essential. Additionally, surrogate models introduced to predict molecule evaluations, suffer from distribution shift as optimization drives candidates increasingly out-of-distribution. To address these challenges, we introduce Joint Self-Improvement, which benefits from (i) a joint generative-predictive model and (ii) a self-improving sampling scheme. The former aligns the generator with the surrogate, alleviating distribution shift, while the latter biases the generative part of the joint model using the predictive one to efficiently generate optimized molecules at inference-time. Experiments across offline and online molecular optimization benchmarks demonstrate that Joint Self-Improvement outperforms state-of-the-art methods under limited evaluation budgets.

标签

分子优化 生成模型 分布偏移 自提升

arXiv 分类

cs.LG