LTS:从搜索历史中学习判别子图挖掘

Ning Jin, Wei Wang
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引用次数: 40

摘要

判别子图可以用来描述复杂图,构造图分类器和生成图索引。判别子图的搜索空间通常非常大。大多数判别子图的兴趣度测量对于子图频率既不是单调的也不是反单调的。因此,分支定界算法无法有效地挖掘判别子图。我们发现判别子图挖掘的搜索历史对于计算子图判别分数的经验上界是非常有用的。我们提出了一种新的判别子图挖掘方法LTS (Learning To Search),它从贪婪算法开始,首先通过子图探测对搜索空间进行采样,然后利用这些样本的搜索历史以分支和界的方式探索搜索空间。已经进行了大量的实验,通过考虑搜索历史来分析性能的增益,并证明与最先进的判别子图挖掘算法相比,LTS可以显着提高性能。
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LTS: Discriminative subgraph mining by learning from search history
Discriminative subgraphs can be used to characterize complex graphs, construct graph classifiers and generate graph indices. The search space for discriminative subgraphs is usually prohibitively large. Most measurements of interestingness of discriminative subgraphs are neither monotonic nor antimonotonic with respect to subgraph frequencies. Therefore, branch-and-bound algorithms are unable to mine discriminative subgraphs efficiently. We discover that search history of discriminative subgraph mining is very useful in computing empirical upper-bounds of discrimination scores of subgraphs. We propose a novel discriminative subgraph mining method, LTS (Learning To Search), which begins with a greedy algorithm that first samples the search space through subgraph probing and then explores the search space in a branch and bound fashion leveraging the search history of these samples. Extensive experiments have been performed to analyze the gain in performance by taking into account search history and to demonstrate that LTS can significantly improve performance compared with the state-of-the-art discriminative subgraph mining algorithms.
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