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Automated design of collective variables using supervised machine learning

机译:使用监督机器学习的集体变量自动设计

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Selection of appropriate collective variables (CVs) for enhancing sampling of molecular simulations remains an unsolved problem in computational modeling. In particular, picking initial CVs is particularly challenging in higher dimensions. Which atomic coordinates or transforms there of from a list of thousands should one pick for enhanced sampling runs? How does a modeler even begin to pick starting coordinates for investigation? This remains true even in the case of simple two state systems and only increases in difficulty for multi-state systems. In this work, we solve the "initial" CV problem using a data-driven approach inspired by the field of supervised machine learning (SML). In particular, we show how the decision functions in SML algorithms can be used as initial CVs (SMLcv) for accelerated sampling. Using solvated alanine dipeptide and Chignolin mini-protein as our test cases, we illustrate how the distance to the support vector machines' decision hyperplane, the output probability estimates from logistic regression, the outputs from shallow or deep neural network classifiers, and other classifiers may be used to reversibly sample slow structural transitions. We discuss the utility of other SML algorithms that might be useful for identifying CVs for accelerating molecular simulations. Published by AIP Publishing.
机译:用于增强分子模拟采样的适当集体变量(CVS)仍然是计算建模中的未解决问题。特别是,拣选初始CV在更高的尺寸中尤其具有挑战性。哪个原子坐标或从成千上万的名单转换,应该选择增强的采样运行吗?建模者甚至如何开始挑选调查的开始坐标?即使在简单的两个状态系统的情况下,这仍然是正确的,并且多状态系统难以增加。在这项工作中,我们使用由监督机器学习(SML)领域的数据驱动方法来解决“初始”CV问题。特别是,我们展示了SML算法中的决策功能如何用作加速采样的初始CVS(SMLCV)。使用溶剂化的丙氨酸二肽和白胶迷你蛋白作为我们的测试用例,我们说明了对支持向量机的距离的距离,逻辑回归的输出概率估计,来自浅层或深神经网络分类器的输出和其他分类器可能用于可逆地样本缓慢的结构转变。我们讨论了其他SML算法的实用性,这可能用于识别用于加速分子模拟的CV。通过AIP发布发布。

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