RAQ: Relationship-Aware Graph Querying in Large Networks
January 19, 2018 Β· Declared Dead Β· π The Web Conference
"No code URL or promise found in abstract"
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Authors
Jithin Vachery, Akhil Arora, Sayan Ranu, Arnab Bhattacharya
arXiv ID
1801.06402
Category
cs.DB: Databases
Citations
3
Venue
The Web Conference
Last Checked
4 months ago
Abstract
The phenomenal growth of graph data from a wide variety of real-world applications has rendered graph querying to be a problem of paramount importance. Traditional techniques use structural as well as node similarities to find matches of a given query graph in a (large) target graph. However, almost all existing techniques have tacitly ignored the presence of relationships in graphs, which are usually encoded through interactions between node and edge labels. In this paper, we propose RAQ -- Relationship-Aware Graph Querying, to mitigate this gap. Given a query graph, RAQ identifies the $k$ best matching subgraphs of the target graph that encode similar relationships as in the query graph. To assess the utility of RAQ as a graph querying paradigm for knowledge discovery and exploration tasks, we perform a user survey on the Internet Movie Database (IMDb), where an overwhelming 86% of the 170 surveyed users preferred the relationship-aware match over traditional graph querying. The need to perform subgraph isomorphism renders RAQ NP-hard. The querying is made practical through beam stack search. Extensive experiments on multiple real-world graph datasets demonstrate RAQ to be effective, efficient, and scalable.
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