2023
DOI: 10.26434/chemrxiv-2023-67hfc-v2
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Tutorial: Determining Best Practices for Using Genetic Algorithms in Molecular Discovery

Abstract: Genetic algorithms (GAs) are a powerful tool to search large chemical spaces for inverse molecular design. However, GAs have multiple hyperparameters that have not been thoroughly investigated for chemical space searches. In this work, we examine the general effects of a number of hyperparameters, such as population size, elitism rate, selection method, mutation rate, and convergence criteria, on key GA performance metrics. We show that using a self-termination method with a minimum Spearman's rank correlation… Show more

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