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GraphGen: Exploring Interesting Graphs in Relational Data

Summary: GraphGen enables declarative graph extraction from relational data, with visual exploration and graph algorithms runnable via NetworkX. By co-optimizing extraction and analytics, it uncovers implicit graphs without data export, enabling end-to-end graph analytics. (summarized by gpt-5-nano on Feb 09 2026)

Paper ID
11111
Venue
VLDB
Year
2015
Pagerank
5.3203552e-05
Overall Rank
5,805 | 59.62%
DOI
-

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