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Graph Machines and Their Applications to Computer-Aided Drug Design: A New Approach to Learning from Structured Data

机译:图形机及其应用于计算机辅助药物设计的应用:一种从结构化数据学习的新方法

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The recent developments of statistical learning focused on vector machines, which learn from examples that are described by vectors of features. However, there are many fields where structured data must be handled; therefore, it would be desirable to learn from examples described by graphs. Graph machines learn real numbers from graphs. Basically, for each graph, a separate learning machine is built, whose algebraic structure contains the same information as the graph. We describe the training of such machines, and show that virtual leave-one-out, a powerful method for assessing the generalization capabilities of conventional vector machines, can be extended to graph machines. Academic examples are described, together with applications to the prediction of pharmaceutical activities of molecules and to the classification of properties; the potential of graph machines for computer-aided drug design are highlighted.
机译:最近统计学习的发展集中在向量机上,这是从特征载体描述的示例中学习的。但是,必须处理结构化数据的许多字段;因此,希望从图表描述的示例中学习。图表机器从图形中学习实数。基本上,对于每个图,构建了一个单独的学习机,其代数结构包含与图形相同的信息。我们描述了这种机器的培训,并表明虚拟休假,一种用于评估传统矢量机器的泛化能力的强大方法,可以扩展到图形机。将学术实施例与应用于分子的药物活性的预测和性能分类;突出了计算机辅助药物设计图形机的潜力。

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