Colibri: Fast mining of large static and dynamic graphs
Hanghang Tong, Spiros Papadimitriou, et al.
KDD 2008
Similarity search of complex structures is an important operation in graph-related applications since exact matching is often too restrictive. In this article, we investigate the issues of substructure similarity search using indexed features in graph databases. By transforming the edge relaxation ratio of a query graph into the maximum allowed feature misses, our structural filtering algorithm can filter graphs without performing pairwise similarity computation. It is further shown that using either too few or too many features can result in poor filtering performance. Thus the challenge is to design an effective feature set selection strategy that could maximize the filtering capability. We prove that the complexity of optimal feature set selection is (2m) in the worst case, where m is the number of features for selection. In practice, we identify several criteria to build effective feature sets for filtering, and demonstrate that combining features with similar size and selectivity can improve the filtering and search performance significantly within a multifilter composition framework. The proposed feature-based filtering concept can be generalized and applied to searching approximate nonconsecutive sequences, trees, and other structured data as well. © 2006 ACM.
Hanghang Tong, Spiros Papadimitriou, et al.
KDD 2008
Charu C. Aggarwal, Yuchen Zhao, et al.
Statistical Analysis and Data Mining
Gengxin Miao, Louise E. Moser, et al.
KDD 2010
Charu C. Aggarwal, Philip S. Yu
SDM 2006