Hidden descriptors: Using statistical treatments to generate better descriptor sets

Lucía Morán-González , Feliu Maseras
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引用次数: 0

Abstract

The application of artificial intelligence to chemistry usually focuses on the identification of good correlations between descriptors and a given property of interest. The descriptors often come from arbitrary sets, with the implicit assumption that the evaluation of a sufficiently wide range of descriptors will lead to a satisfactory choice. Recent work in our group has focused on applying statistical analysis to large amounts of DFT results with the goal of finding optimal descriptor sets for a given property, which we label as hidden descriptors. This article briefly discusses this treatment and the chemical knowledge that has been gained through its application in two different domains: metal-ligand bond strength in transition metal complexes, and energy barriers in bimolecular nucleophilic substitution reactions.

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隐藏的描述符:使用统计处理方法生成更好的描述符集
人工智能在化学中的应用通常侧重于识别描述符与特定相关性质之间的良好相关性。描述符通常来自任意集合,其隐含的假设是,对足够广泛的描述符进行评估,就能得出令人满意的选择。我们小组最近的工作重点是将统计分析应用于大量的 DFT 结果,目的是为给定属性找到最佳描述符集,我们将其称为隐藏描述符。本文简要讨论了这一处理方法,以及通过将其应用于两个不同领域而获得的化学知识:过渡金属配合物中的金属配体键强度,以及双分子亲核取代反应中的能量障碍。
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来源期刊
Artificial intelligence chemistry
Artificial intelligence chemistry Chemistry (General)
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