Guangtong Zhou, Selasi Kwashie, Yidi Zhang, Michael Bewong, V. M. Nofong, Debo Cheng, K. He, Zaiwen Feng
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FASTAGEDS: Fast Approximate Graph Entity Dependency Discovery
This paper studies the discovery of approximate rules in property graphs. We propose a semantically meaningful measure of error for mining graph entity dependencies (GEDs) at almost hold, to tolerate errors and inconsistencies that exist in real-world graphs. We present a new characterisation of GED satisfaction, and devise a depth-first search strategy to traverse the search space of candidate rules efficiently. Further, we perform experiments to demonstrate the feasibility and scalability of our solution, FASTAGEDS, with three real-world graphs.