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Interpreting linear support vector machine models with heat map molecule coloring

机译:用热图分子着色解释线性支持向量机模型

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摘要

BackgroundModel-based virtual screening plays an important role in the early drug discovery stage. The outcomes of high-throughput screenings are a valuable source for machine learning algorithms to infer such models. Besides a strong performance, the interpretability of a machine learning model is a desired property to guide the optimization of a compound in later drug discovery stages. Linear support vector machines showed to have a convincing performance on large-scale data sets. The goal of this study is to present a heat map molecule coloring technique to interpret linear support vector machine models. Based on the weights of a linear model, the visualization approach colors each atom and bond of a compound according to its importance for activity.
机译:基于BackgroundModel的虚拟筛选在药物开发的早期阶段起着重要作用。高通量筛选的结果是机器学习算法推断此类模型的宝贵资源。除了强大的性能外,机器学习模型的可解释性也是在以后的药物发现阶段指导化合物优化的理想属性。线性支持向量机在大规模数据集上显示出令人信服的性能。这项研究的目的是提出一种热图分子着色技术来解释线性支持向量机模型。根据线性模型的权重,可视化方法根据化合物对活性的重要性为化合物的每个原子和键着色。

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