Affiliation:
1. Northeastern University, China
2. Hong Kong University of Science and Technology, Hong Kong, China
3. Microsoft Research Asia, Beijing, China
Abstract
Many studies have been conducted on seeking the efficient solution for subgraph similarity search over certain (deterministic) graphs due to its wide application in many fields, including bioinformatics, social network analysis, and Resource Description Framework (RDF) data management. All these works assume that the underlying data are certain. However, in reality, graphs are often noisy and uncertain due to various factors, such as errors in data extraction, inconsistencies in data integration, and privacy preserving purposes. Therefore, in this paper, we study subgraph similarity search on large probabilistic graph databases. Different from previous works assuming that edges in an uncertain graph are independent of each other, we study the uncertain graphs where edges' occurrences are correlated. We formally prove that subgraph similarity search over probabilistic graphs is #P-complete, thus, we employ a
filter-and-verify
framework to speed up the search. In the
filtering
phase, we develop tight lower and upper bounds of
subgraph similarity probability
based on a probabilistic matrix index, PMI. PMI is composed of discriminative subgraph features associated with tight lower and upper bounds of
subgraph isomorphism probability
. Based on PMI, we can sort out a large number of probabilistic graphs and maximize the pruning capability. During the
verification
phase, we develop an efficient sampling algorithm to validate the remaining candidates. The efficiency of our proposed solutions has been verified through extensive experiments.
Subject
General Earth and Planetary Sciences,Water Science and Technology,Geography, Planning and Development
Cited by
61 articles.
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