Method for Similarity Join on Uncertain Graph Database
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National Key Technology Support Program of China (2015BAH10F00); National Natural Science Foundation of China (61472099, 61133002); Natural Science Foundation of Fujian Province, China (2018J01555); Fujian Provincial Department of Education Youth Project (JAT170653); University Youth Foud of Ningde Normal University (2014Q51)

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    Abstract:

    Many studies have been conducted on similarity join over certain (deterministic) graphs. However, in reality, graphs are often uncertain due to various factors. This paper studies similarity join on uncertain graph databases. The study employs the joint probability distribution to describe the uncertainty of edges in the graph, combines a new measure to evaluate graph similarity, and gives the formal definition of the similarity join on uncertain graph database. The paper also designs a group of filtering strategies to reduce the candidate pairs in the similarity join. A large number of experimental data show that, the method proposed in the paper is feasible and accurate.

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缪丰羽,王宏志.一种不确定图数据库上的相似性连接方法.软件学报,2018,29(10):3150-3163

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History
  • Received:March 11,2016
  • Revised:August 11,2016
  • Adopted:
  • Online: July 20,2017
  • Published:
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