Clustering Through Decision Tree Construction
Bing Liu, Yiyuan Xia, et al.
CIKM 2000
Graphs have become increasingly important in modelling complicated structures and schemaless data such as chemical compounds, proteins, and XML documents. Given a graph query, it is desirable to retrieve graphs quickly from a large database via indices. In this article, we investigate the issues of indexing graphs and propose a novel indexing model based on discriminative frequent structures that are identified through a graph mining process. We show that the compact index built under this model can achieve better performance in processing graph queries. Since discriminative frequent structures capture the intrinsic characteristics of the data, they are relatively stable to database updates, thus facilitating sampling-based feature extraction and incremental index maintenance. Our approach not only provides an elegant solution to the graph indexing problem, but also demonstrates how database indexing and query processing can benefit from data mining, especially frequent pattern mining. Furthermore, the concepts developed here can be generalized and applied to indexing sequences, trees, and other complicated structures as well. © 2005 ACM.
Bing Liu, Yiyuan Xia, et al.
CIKM 2000
Wei Fan, Fang Chu, et al.
AAAI/IAAI 2002
Michail Vlachos, Philip S. Yu, et al.
Data Mining and Knowledge Discovery
Yi Chen, Shu Tao, et al.
VLDB 2011