不确定图分类的判别特征选择。

Xiangnan Kong, Philip S Yu, Xue Wang, Ann B Ragin
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引用次数: 48

摘要

图数据的判别特征挖掘由于在图分类器的构建、图索引的生成等方面的重要作用,近年来受到了广泛的关注。大多数判别子图特征的兴趣度度量都是在特定的图上定义的,其中图对象的结构是确定的,并且每个图中的二值边表示节点之间存在联系。然而,在许多实际应用中,图的链接结构本质上是不确定的。因此,现有的基于某些图的兴趣度测量无法有效地捕获这些应用中的结构不确定性。本文研究了不确定图的判别子图特征选择问题。该问题与传统的子图挖掘问题不同,具有挑战性,因为图对象的结构和每个子图特征的识别分数都是不确定的。为了解决这些问题,我们提出了一种新的判别子图特征选择方法Dug,该方法可以根据不同的统计度量(包括期望、中位数、众数和φ-概率)在不确定图中找到判别子图特征。我们首先基于动态规划计算每个子图特征的判别分数的概率分布。然后提出了一种分支定界算法来有效地搜索判别子图。在各种神经影像学应用(即阿尔茨海默病,多动症和艾滋病毒)上进行了广泛的实验,通过考虑图分类中识别判别子图特征的结构不确定性来分析性能的增益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Discriminative Feature Selection for Uncertain Graph Classification.
Mining discriminative features for graph data has attracted much attention in recent years due to its important role in constructing graph classifiers, generating graph indices, etc. Most measurement of interestingness of discriminative subgraph features are defined on certain graphs, where the structure of graph objects are certain, and the binary edges within each graph represent the "presence" of linkages among the nodes. In many real-world applications, however, the linkage structure of the graphs is inherently uncertain. Therefore, existing measurements of interestingness based upon certain graphs are unable to capture the structural uncertainty in these applications effectively. In this paper, we study the problem of discriminative subgraph feature selection from uncertain graphs. This problem is challenging and different from conventional subgraph mining problems because both the structure of the graph objects and the discrimination score of each subgraph feature are uncertain. To address these challenges, we propose a novel discriminative subgraph feature selection method, Dug, which can find discriminative subgraph features in uncertain graphs based upon different statistical measures including expectation, median, mode and φ-probability. We first compute the probability distribution of the discrimination scores for each subgraph feature based on dynamic programming. Then a branch-and-bound algorithm is proposed to search for discriminative subgraphs efficiently. Extensive experiments on various neuroimaging applications (i.e., Alzheimers Disease, ADHD and HIV) have been performed to analyze the gain in performance by taking into account structural uncertainties in identifying discriminative subgraph features for graph classification.
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