Graph Neural Network-State Predictive Information Bottleneck (GNN-SPIB) approach for learning molecular thermodynamics and kinetics

Ziyue Zou, Dedi Wang, Pratyush Tiwary
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Abstract

Molecular dynamics simulations offer detailed insights into atomic motions but face timescale limitations. Enhanced sampling methods have addressed these challenges but even with machine learning, they often rely on pre-selected expert-based features. In this work, we present the Graph Neural Network-State Predictive Information Bottleneck (GNN-SPIB) framework, which combines graph neural networks and the State Predictive Information Bottleneck to automatically learn low-dimensional representations directly from atomic coordinates. Tested on three benchmark systems, our approach predicts essential structural, thermodynamic and kinetic information for slow processes, demonstrating robustness across diverse systems. The method shows promise for complex systems, enabling effective enhanced sampling without requiring pre-defined reaction coordinates or input features.
学习分子热力学和动力学的图神经网络-状态预测信息瓶颈(GNN-SPIB)方法
分子动力学模拟可提供原子运动的详细洞察,但面临时间尺度的限制。增强型采样方法已经解决了这些挑战,但即使是机器学习,它们也往往依赖于预选的基于专家的特征。在这项工作中,我们提出了图神经网络-状态预测信息瓶颈(GNN-SPIB)框架,该框架结合了图神经网络和状态预测信息瓶颈,可直接从原子坐标自动学习低维表征。通过对三个基准系统的测试,我们的方法预测出了缓慢过程的基本结构、热力学和动力学信息,证明了该方法在不同系统中的鲁棒性。该方法有望用于复杂系统,无需预先定义反应坐标或输入特征,即可实现有效的增强采样。
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