Matching Heterogeneous Events with Patterns

作者:Song, Shaoxu; Gao, Yu; Wang, Chaokun*; Zhu, Xiaochen; Wang, Jianmin; Yu, Philip S.
来源:IEEE Transactions on Knowledge and Data Engineering, 2017, 29(8): 1695-1708.
DOI:10.1109/TKDE.2017.2690912

摘要

A large amount of heterogeneous event data are increasingly generated, e.g., in online systems for Web services or operational systems in enterprises. Owing to the difference between event data and traditional relational data, the matching of heterogeneous events is highly non-trivial. While event names are often opaque (e.g., merely with obscure IDs), the existing structure-based matching techniques for relational data also fail to perform owing to the poor discriminative power of dependency relationships between events. We note that interesting patterns exist in the occurrence of events, which may serve as discriminative features in event matching. In this paper, we formalize the problem of matching events with patterns. A generic pattern based matching framework is proposed, which is compatible with the existing structure based techniques. To improve the matching efficiency, we devise several bounds of matching scores for pruning. Recognizing the NP-hardness of the optimal event matching problem with patterns, we propose efficient heuristic. Finally, extensive experiments demonstrate the effectiveness of our pattern based matching compared with approaches adapted from existing techniques, and the efficiency improved by the bounding, pruning and heuristic methods.