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首页> 外文期刊>Journal of chemical theory and computation: JCTC >Machine Learning of Parameters for Accurate Semiempirical Quantum Chemical Calculations
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Machine Learning of Parameters for Accurate Semiempirical Quantum Chemical Calculations

机译:精确的半经验量子化学计算的参数机器学习

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摘要

We investigate possible improvements in the accuracy of semiempirical quantum chemistry (SQC) methods through the use of machine learning (ML) models for the parameters. For a given class of compounds, ML techniques require sufficiently large training sets to develop ML models that can be used for adapting SQC parameters to reflect changes in molecular composition and geometry. The ML-SQC approach allows the automatic tuning of SQC parameters for individual molecules, thereby improving the accuracy without deteriorating transferability to molecules with molecular descriptors very different from those in the training set. The performance of this approach is demonstrated for the semiempirical OM2 method using a set of 6095 constitutional isomers C7H10O2, for which accurate ab initio atomization enthalpies are available. The ML-OM2 results show improved average accuracy and a much reduced error range compared with those of standard OM2 results, with mean absolute errors in atomization enthalpies dropping from 6.3 to 1.7 kcal/mol. They are also found to be superior to the results from specific OM2 reparameterizations (rOM2) for the same set of isomers. The ML-SQC approach thus holds promise for fast and reasonably accurate high-throughput screening of materials and molecules.
机译:我们通过使用机器学习(ML)模型作为参数来研究半经验量子化学(SQC)方法的准确性可能的提高。对于给定类别的化合物,ML技术需要足够大的训练集来开发ML模型,该模型可用于调整SQC参数以反映分子组成和几何形状的变化。 ML-SQC方法允许自动调整单个分子的SQC参数,从而提高准确性,而不会降低分子描述符与训练集中的分子的转移性。使用一组6095个结构异构体C7H10O2对半经验OM2方法论证了该方法的性能,为此可使用精确的从头算起的雾化焓。与标准OM2结果相比,ML-OM2结果显示出更高的平均准确度,并且误差范围大大减小,雾化焓的平均绝对误差从6.3 kcal / mol降至1.7 kcal / mol。还发现它们优于相同异构体的特定OM2重新参数化(rOM2)结果。因此,ML-SQC方法有望对材料和分子进行快速,合理的高通量筛选。

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