Curiosity in exploring chemical space: Intrinsic rewards for deep molecular reinforcement learning

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Authors Luca A. Thiede, Mario Krenn, AkshatKumar Nigam, Alan Aspuru-Guzik arXiv ID 2012.11293 Category cs.LG: Machine Learning Cross-listed cs.AI, physics.chem-ph Citations 35 Venue Machine Learning: Science and Technology Last Checked 4 months ago
Abstract
Computer-aided design of molecules has the potential to disrupt the field of drug and material discovery. Machine learning, and deep learning, in particular, have been topics where the field has been developing at a rapid pace. Reinforcement learning is a particularly promising approach since it allows for molecular design without prior knowledge. However, the search space is vast and efficient exploration is desirable when using reinforcement learning agents. In this study, we propose an algorithm to aid efficient exploration. The algorithm is inspired by a concept known in the literature as curiosity. We show on three benchmarks that a curious agent finds better performing molecules. This indicates an exciting new research direction for reinforcement learning agents that can explore the chemical space out of their own motivation. This has the potential to eventually lead to unexpected new molecules that no human has thought about so far.
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