论文标题
解释使用可解释的人工智能(XAI)从深神经网络获得的丙氨酸二肽异构化的反应坐标
Explaining reaction coordinates of alanine dipeptide isomerization obtained from deep neural networks using Explainable Artificial Intelligence (XAI)
论文作者
论文摘要
需要一种获得适当反应坐标的方法,以鉴定在复杂分子系统中区分产物和反应物的过渡态。最近,大量的研究专门用于使用深度学习文献中的人工神经网络获得反应坐标,在该文献中通常在输入层中使用了许多集体变量。但是,由于深层神经网络中非线性功能的复杂性,很难解释哪些集体变量有助于预测的反应坐标的细节。为了克服这一局限性,我们使用了可解释的人工智能(XAI)方法的局部可解释模型 - 敏捷解释(LIME)和基于游戏理论的框架,称为Shapley添加性解释(SHAP)。我们证明了XAI使我们能够获得每个集体变量对反应坐标的贡献程度,而反应坐标是由非线性回归确定的,对真空中丙氨酸二肽异构化的委员会进行了深入学习。特别是,石灰和外形都为预测的反应坐标提供了重要特征,这些特征的特征是适当的二面角,符合先前从委员会测试分析中报道的角度一致。本研究提供了一个AI辅助框架来解释适当的反应坐标,当自由度增加时,该框架就具有相当大的意义。
A method for obtaining appropriate reaction coordinates is required to identify transition states distinguishing product and reactant in complex molecular systems. Recently, abundant research has been devoted to obtaining reaction coordinates using artificial neural networks from deep learning literature, where many collective variables are typically utilized in the input layer. However, it is difficult to explain the details of which collective variables contribute to the predicted reaction coordinates owing to the complexity of the nonlinear functions in deep neural networks. To overcome this limitation, we used Explainable Artificial Intelligence (XAI) methods of the Local Interpretable Model-agnostic Explanation (LIME) and the game theory-based framework known as Shapley Additive exPlanations (SHAP). We demonstrated that XAI enables us to obtain the degree of contribution of each collective variable to reaction coordinates that is determined by nonlinear regressions with deep learning for the committor of the alanine dipeptide isomerization in vacuum. In particular, both LIME and SHAP provide important features to the predicted reaction coordinates, which are characterized by appropriate dihedral angles consistent with those previously reported from the committor test analysis. The present study offers an AI-aided framework to explain the appropriate reaction coordinates, which acquires considerable significance when the number of degrees of freedom increases.