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Representations in neural network based empirical potentials

机译:基于神经网络的经验潜力的表示

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Many structural and mechanical properties of crystals, glasses, and biological macromolecules can be modeled from the local interactions between atoms. These interactions ultimately derive from the quantum nature of electrons, which can be prohibitively expensive to simulate. Machine learning has the potential to revolutionize materials modeling due to its ability to efficiently approximate complex functions. For example, neural networks can be trained to reproduce results of density functional theory calculations at a much lower cost. However, how neural networks reach their predictions is not well understood, which has led to them being used as a "black box" tool. This lack of understanding is not desirable especially for applications of neural networks in scientific inquiry. We argue that machine learning models trained on physical systems can be used as more than just approximations since they had to "learn" physical concepts in order to reproduce the labels they were trained on. We use dimensionality reduction techniques to study in detail the representation of silicon atoms at different stages in a neural network, which provides insight into how a neural network learns to model atomic interactions. Published by AIP Publishing.
机译:晶体,玻璃和生物大分子的许多结构和机械性能可以从原子之间的局部相互作用建模。这些相互作用最终导出了电子的量子性质,这可能对模拟昂贵。由于其有效地近似复杂功能,机器学习有可能彻底改变材料建模。例如,可以训练神经网络以以更低的成本训练以再现密度函数理论计算的结果。然而,网络是如何达到的神经他们的预测还不是很清楚,这导致了他们被用作“黑盒子”的工具。这种缺乏理解是不可取的,特别是对于神经网络在科学调查中的应用。我们认为,在物理系统上培训的机器学习模型可以用作近似近似,因为它们必须“学习”物理概念,以便重现他们接受培训的标签。我们使用维数降低技术的详细在不同阶段的硅原子的表示以研究在神经网络中,这提供深入了解神经网络获知到的原子相互作用建模。通过AIP发布发布。

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