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首页> 外文期刊>The Journal of Chemical Physics >Machine learning for potential energy surfaces: An extensive database and assessment of methods
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Machine learning for potential energy surfaces: An extensive database and assessment of methods

机译:机器学习潜在能量表面:广泛的数据库和方法评估

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On the basis of a new extensive database constructed for the purpose, we assess various Machine Learning (ML) algorithms to predict energies in the framework of potential energy surface (PES) construction and discuss black box character, robustness, and efficiency. The database for training ML algorithms in energy predictions based on the molecular structure contains SCF, RI-MP2, RI-MP2-F12, and CCSD(F12(star))(T) data for around 10.5 x 10(6) configurations of 15 small molecules. The electronic energies as function of molecular structure are computed from both static and iteratively refined grids in the context of automized PES construction for anharmonic vibrational computations within the n-mode expansion. We explore the performance of a range of algorithms including Gaussian Process Regression (GPR), Kernel Ridge Regression, Support Vector Regression, and Neural Networks (NNs). We also explore methods related to GPR such as sparse Gaussian Process Regression, Gaussian process Markov Chains, and Sparse Gaussian Process Markov Chains. For NNs, we report some explorations of architecture, activation functions, and numerical settings. Different delta-learning strategies are considered, and the use of delta learning targeting CCSD(F12(star))(T) predictions using, for example, RI-MP2 combined with machine learned CCSD(F12(star))(T)-RI-MP2 differences is found to be an attractive option. Published under license by AIP Publishing.
机译:在为宗旨,构建一个新的庞大的数据库的基础上,评估各种机器学习(ML)算法来预测能量势能面(PES)建设的框架和讨论黑匣子字符,耐用性和效率。基于分子结构中的能量的预测训练ML算法的数据库包含SCF,RI-MP2,RI-MP2-F12,和CCSD(F12(星))(T)的数据为围绕10.5×10(6)15构小分子。的电子能量作为分子结构的功能是从静态计算并在automized PES结构的n-模式扩张内非谐振动计算的上下文中迭代地细化网格。我们探讨了一系列算法,包括高斯过程回归(GPR),内核岭回归,支持向量回归,与神经网络的(神经网络)的性能。我们还探讨了诸如稀疏高斯过程回归,高斯过程马尔可夫链,以及稀疏高斯过程马尔可夫链相关GPR方法。对于神经网络,我们的报告结构,激活功能,和数值设置的一些探索。不同的增量学习策略被认为是,与使用增量学习目标CCSD的使用(F12(星))(T)的预测,例如,RI-MP2与机器相结合学会CCSD(F12(星))(T)-RI -MP2差异被发现是一个有吸引力的选择。通过AIP发布在许可证下发布。

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