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PCA-Based Representations of Graphs for Prediction in QSAR Studies

机译:基于PCA的图表示法用于QSAR研究中的预测

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In recent years, more and more attention has been paid on learning in structured domains, e.g. Chemistry. Both Neural Networks and Kernel Methods for structured data have been proposed. Here, we show that a recently developed technique for structured domains, i.e. PCA for structures, permits to generate representations of graphs (specifically, molecular graphs) which are quite effective when used for prediction tasks (QSAR studies). The advantage of these representations is that they can be generated automatically and exploited by any traditional predictor (e.g., Support Vector Regression with linear kernel).
机译:近年来,在结构化领域中的学习越来越受到关注,例如化学。已经提出了用于结构化数据的神经网络和内核方法。在这里,我们表明,针对结构域的最新开发技术(即用于结构的PCA)允许生成图形(特别是分子图)的表示,当用于预测任务(QSAR研究)时,该表示非常有效。这些表示的优点是它们可以自动生成,并可以由任何传统的预测器使用(例如,使用线性核的支持向量回归)。

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