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Synergy Between Expert and Machine-Learning Approaches Allows for Improved Retrosynthetic Planning

机译:专家和机器学习方法之间的协同作用允许改进的逆转计划

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When computers plan multistep syntheses, they can rely either on expert knowledge or information machine-extracted from large reaction repositories. Both approaches suffer from imperfect functions evaluating reaction choices: expert functions are heuristics based on chemical intuition, whereas machine learning (ML) relies on neural networks (NNs) that can make meaningful predictions only about popular reaction types. This paper shows that expert and ML approaches can be synergistic-specifically, when NNs are trained on literature data matched onto high-quality, expert-coded reaction rules, they achieve higher synthetic accuracy than either of the methods alone and, importantly, can also handle rare/specialized reaction types.
机译:当计算机计划MultiSep合成时,它们可以依赖于从大型反应存储库中提取的专家知识或信息机器。 两种方法都遭受了不完美的函数,评估反应选择:专家功能是基于化学直觉的启发式,而机器学习(ML)依赖于可以对流行反应类型进行有意义的预测来依赖于神经网络(NN)。 本文表明,专家和ML方法可以是协同的 - 特别是当NNS在与高质量的专家编码的反应规则匹配的文献数据上培训时,它们比单独的方法更高的合成精度,重要的是,也可以 处理稀有/专用反应类型。

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