Applications for neural networks in chemistry. 2. A general connectivity representation for the prediction of regiochemistry

David W. Elrod , Gerald M. Maggiora , Robert G. Trenary
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引用次数: 14

Abstract

A general method for the prediction of organic reactions by a backpropagation neural network is described. Neural networks trained using modified Dugundji-Ugi BE-matrix representations gave excellent predictions of the regiochemistry for three different types of reactions: Markovnikov addition to alkenes, Diels-Alder and retro-Diels-Alder reactions, and Saytzeff elimination. The networks were able to extract reactivity information from examples of the reactions to develop an internal representation of the reactions without explicitly incorporating rules into the network. Since the neural network was better at interpolating than extrapolating, it is important that the training set span the set of possible reactions. The method of representation used is sufficiently general to handle most classes of organic reactions.

神经网络在化学中的应用。2. 区域化学预测的一般连通性表示
介绍了用反向传播神经网络预测有机反应的一般方法。使用改进的Dugundji-Ugi be矩阵表示训练的神经网络对三种不同类型的反应(烯烃马尔可夫尼科夫加成反应、Diels-Alder反应和反Diels-Alder反应以及Saytzeff消除反应)的区域化学做出了很好的预测。该网络能够从反应的例子中提取反应性信息,以开发反应的内部表示,而无需明确地将规则纳入网络。由于神经网络更擅长内插而不是外推,所以训练集跨越可能的反应集是很重要的。所使用的表示方法是足够通用的,可以处理大多数种类的有机反应。
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