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arxiv: 2402.05961 · v4 · pith:BT4RXAX6new · submitted 2024-02-05 · 🧬 q-bio.BM · cs.LG· cs.NE

Genetic-guided GFlowNets for Sample Efficient Molecular Optimization

classification 🧬 q-bio.BM cs.LGcs.NE
keywords algorithmdeepgenerativemolecularoptimizationgeneticgflownetsmethod
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The challenge of discovering new molecules with desired properties is crucial in domains like drug discovery and material design. Recent advances in deep learning-based generative methods have shown promise but face the issue of sample efficiency due to the computational expense of evaluating the reward function. This paper proposes a novel algorithm for sample-efficient molecular optimization by distilling a powerful genetic algorithm into deep generative policy using GFlowNets training, the off-policy method for amortized inference. This approach enables the deep generative policy to learn from domain knowledge, which has been explicitly integrated into the genetic algorithm. Our method achieves state-of-the-art performance in the official molecular optimization benchmark, significantly outperforming previous methods. It also demonstrates effectiveness in designing inhibitors against SARS-CoV-2 with substantially fewer reward calls.

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