Multi-label Feature Selection for Graph Classification

Xiangnan Kong, Philip S. Yu
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引用次数: 45

Abstract

Nowadays, the classification of graph data has become an important and active research topic in the last decade, which has a wide variety of real world applications, e.g. drug activity predictions and kinase inhibitor discovery. Current research on graph classification focuses on single-label settings. However, in many applications, each graph data can be assigned with a set of multiple labels simultaneously. Extracting good features using multiple labels of the graphs becomes an important step before graph classification. In this paper, we study the problem of multi-label feature selection for graph classification and propose a novel solution, called gMLC, to efficiently search for optimal sub graph features for graph objects with multiple labels. Different from existing feature selection methods in vector spaces which assume the feature set is given, we perform multi-label feature selection for graph data in a progressive way together with the sub graph feature mining process. We derive an evaluation criterion, named gHSIC, to estimate the dependence between sub graph features and multiple labels of graphs. Then a branch-and-bound algorithm is proposed to efficiently search for optimal sub graph features by judiciously pruning the sub graph search space using multiple labels. Empirical studies on real-world tasks demonstrate that our feature selection approach can effectively boost multi-label graph classification performances and is more efficient by pruning the sub graph search space using multiple labels.
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图分类的多标签特征选择
如今,图数据的分类已成为近十年来一个重要而活跃的研究课题,它在现实世界中有着广泛的应用,例如药物活性预测和激酶抑制剂的发现。目前对图分类的研究主要集中在单标签设置上。然而,在许多应用程序中,每个图数据可以同时分配一组多个标签。利用图的多个标签提取好的特征是图分类前的一个重要步骤。本文研究了图分类中多标签特征的选择问题,提出了一种新的解决方案gMLC,用于多标签图对象的最优子图特征的高效搜索。与现有的向量空间特征选择方法假设特征集给定不同,我们对图数据进行多标签特征选择,并结合子图特征挖掘过程逐步进行多标签特征选择。我们提出了一个评价准则,称为gHSIC,用于估计子图特征与图的多个标签之间的依赖关系。在此基础上,提出了一种分支定界算法,通过对子图搜索空间进行多标签修剪,有效地搜索出最优子图特征。对现实任务的实证研究表明,我们的特征选择方法可以有效地提高多标签图分类性能,并且通过使用多个标签修剪子图搜索空间更有效。
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