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Compressing physics with an autoencoder: Creating an atomic species representation to improve machine learning models in the chemical sciences

机译:用AutoEncoder压缩物理:创建原子种表示,以改善化学科学的机器学习模型

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We define a vector quantity which corresponds to atomic species identity by compressing a set of physical properties with an autoencoder. This vector, referred to here as the elemental modes, provides many advantages in downstream machine learning tasks. Using the elemental modes directly as the feature vector, we trained a neural network to predict formation energies of elpasolites with improved accuracy over previous works on the same task. Combining the elemental modes with geometric features used in high-dimensional neural network potentials (HD-NNPs) solves many problems of scaling and efficiency in the development of such neural network potentials. Whereas similar models in the past have been limited to typically four atomic species (H, C, N, and O), our implementation does not scale in cost by adding more atomic species and allows us to train an HD-NNP model which treats molecules containing H, C, N, O, F, P, S, Cl, Se, Br, and I. Finally, we establish that our implementation allows us to define feature vectors for alchemical intermediate states in the HD-NNP model, which opens up new possibilities for performing alchemical free energy calculations on systems where bond breaking/forming is important. Published under license by AIP Publishing.
机译:我们通过使用AutoEncoder压缩一组物理属性来定义对应于原子物种标识的向量量。此向量,此处称为元素模式,在下游机器学习任务中提供了许多优点。使用元素模式直接用作特征向量,我们培训了神经网络,以预测ELPASOLITES的形成能量,并在同一任务上提高了对先前作品的准确性。将具有在高维神经网络电位(HD-NNPS)中使用的几何特征的元素模式解决了在这种神经网络电位的发展中的缩放和效率的许多问题。然而,过去的类似模型被限制为通常四种原子物种(H,C,N和O),我们的实施通过添加更多原子物种并允许我们培训治疗分子的HD-NNP模型来规模不成本包含H,C,N,O,F,P,S,CL,SE,BR和I.最后,我们建立了我们的实现允许我们在HD-NNP模型中定义用于炼金术中间状态的特征向量,其打开对粘结/形成很重要的系统进行炼金术自由能量计算的新可能性。通过AIP发布在许可证下发布。

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