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Predicting the outcomes of organic reactions via machine learning: are current descriptors sufficient?

机译:通过机器学习预测有机反应的结果:当前的描述符是否足够?

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摘要

As machine learning/artificial intelligence algorithms are defeating chess masters and, most recently, GO champions, there is interest – and hope – that they will prove equally useful in assisting chemists in predicting outcomes of organic reactions. This paper demonstrates, however, that the applicability of machine learning to the problems of chemical reactivity over diverse types of chemistries remains limited – in particular, with the currently available chemical descriptors, fundamental mathematical theorems impose upper bounds on the accuracy with which raction yields and times can be predicted. Improving the performance of machine-learning methods calls for the development of fundamentally new chemical descriptors.
机译:随着机器学习/人工智能算法击败国际象棋大师和最近的GO冠军,人们有兴趣并希望它们在帮助化学家预测有机反应的结果方面同样有用。但是,本文证明,机器学习在各种类型的化学反应中对化学反应性问题的适用性仍然受到限制-尤其是在使用当前可用的化学描述符的情况下,基本的数学定理对支链收率和收率的准确性施加了上限。时间可以预测。改善机器学习方法的性能要求开发根本上新的化学描述符。

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