论文标题

关于分子建模和模拟深度学习的观点

A Perspective on Deep Learning for Molecular Modeling and Simulations

论文作者

Zhang, Jun, Lei, Yao-Kun, Zhang, Zhen, Chang, Junhan, Li, Maodong, Han, Xu, Yang, Lijiang, Yang, Yi Isaac, Gao, Yi Qin

论文摘要

深度学习正在改变科学领域的许多领域,并且在建模分子系统方面具有巨大的潜力。但是,与计算机视觉和自然语言处理中深度学习的成熟部署不同,它在分子建模和模拟中的发展仍处于早期阶段,这主要是因为分子的归纳性偏见与图像或文本的诱导性偏见完全不同。在这些差异上,我们首先从分子物理学的角度回顾了传统深度学习模型的局限性,并在分子建模和深度学习之间的接口上结合了一些相关的技术进步。我们不仅关注更复杂的神经网络模型,而是强调了现代深度学习背后的理论和思想。我们希望将这些想法交易成分子建模将创造新的机会。为此,我们总结了一些代表性的应用程序,从监督到无监督和强化学习,并讨论了他们与深度学习的新兴趋势的联系。最后,我们展现了有希望的方向,这可能有助于解决当前深层分子建模框架中现有问题。

Deep learning is transforming many areas in science, and it has great potential in modeling molecular systems. However, unlike the mature deployment of deep learning in computer vision and natural language processing, its development in molecular modeling and simulations is still at an early stage, largely because the inductive biases of molecules are completely different from those of images or texts. Footed on these differences, we first reviewed the limitations of traditional deep learning models from the perspective of molecular physics, and wrapped up some relevant technical advancement at the interface between molecular modeling and deep learning. We do not focus merely on the ever more complex neural network models, instead, we emphasize the theories and ideas behind modern deep learning. We hope that transacting these ideas into molecular modeling will create new opportunities. For this purpose, we summarized several representative applications, ranging from supervised to unsupervised and reinforcement learning, and discussed their connections with the emerging trends in deep learning. Finally, we outlook promising directions which may help address the existing issues in the current framework of deep molecular modeling.

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