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Development of an exchange–correlation functional with uncertainty quantification capabilities for density functional theory

机译:为密度泛函理论开发具有不确定性量化功能的交换相关函数

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摘要

This paper presents the development of a new exchange–correlation functional from the point of view of machine learning. Using atomization energies of solids and small molecules, we train a linear model for the exchange enhancement factor using a Bayesian approach which allows for the quantification of uncertainties in the predictions. A relevance vector machine is used to automatically select the most relevant terms of the model. We then test this model on atomization energies and also on bulk properties. The average model provides a mean absolute error of only 0.116 eV for the test points of the G2/97 set but a larger 0.314 eV for the test solids. In terms of bulk properties, the prediction for transition metals and monovalent semiconductors has a very low test error. However, as expected, predictions for types of materials not represented in the training set such as ionic solids show much larger errors.
机译:本文从机器学习的角度介绍了一种新的交换相关函数的开发。利用固体和小分子的雾化能量,我们使用贝叶斯方法训练交换增强因子的线性模型,该模型允许对预测中的不确定性进行量化。相关向量机用于自动选择模型中最相关的项。然后,我们在雾化能量以及整体性质上测试该模型。对于G2 / 97组的测试点,平均模型提供的平均绝对误差仅为0.116 eV,而对于测试固体,则提供的平均绝对误差更大,为0.314 eV。就整体性质而言,对过渡金属和单价半导体的预测具有非常低的测试误差。但是,正如预期的那样,对于训练集中未表示的材料类型(例如离子固体)的预测显示出更大的误差。

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