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Towards the Modeling of Atomic and Molecular Clusters Energy by Support Vector Regression

机译:基于支持向量回归的原子和分子团簇能量建模

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Simulations of molecular dynamics play an important role in computational chemistry and physics. Such simulations require accurate information about the state and properties of interacting systems. The computation of water cluster potential energy surface is a complex and computationally expensive operation. Therefore, machine learning methods such as Artificial Neural Networks have been recently employed to machine-learn and further approximate clusters potential energy surfaces. This works presents the application of another highly successful machine learning method, the Support Vector Regression, for the modeling and approximation of the potential energy of water clusters as representatives of more general molecular clusters.
机译:分子动力学模拟在计算化学和物理中起着重要作用。这种模拟需要有关交互系统的状态和属性的准确信息。水簇势能面的计算是复杂且计算昂贵的操作。因此,近来已采用诸如人工神经网络之类的机器学习方法来机器学习并进一步近似群集势能面。这项工作提出了另一种非常成功的机器学习方法的应用,即支持向量回归,该方法可以对水簇的势能进行建模和近似,以作为更一般分子簇的代表。

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