Space-Query Tradeoffs in Range Subgraph Counting and Listing
January 09, 2023 Β· Declared Dead Β· π International Conference on Database Theory
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Authors
Shiyuan Deng, Shangqi Lu, Yufei Tao
arXiv ID
2301.03390
Category
cs.DS: Data Structures & Algorithms
Cross-listed
cs.DB
Citations
5
Venue
International Conference on Database Theory
Last Checked
4 months ago
Abstract
This paper initializes the study of {\em range subgraph counting} and {\em range subgraph listing}, both of which are motivated by the significant demands in practice to perform graph analytics on subgraphs pertinent to only selected, as opposed to all, vertices. In the first problem, there is an undirected graph $G$ where each vertex carries a real-valued attribute. Given an interval $q$ and a pattern $Q$, a query counts the number of occurrences of $Q$ in the subgraph of $G$ induced by the vertices whose attributes fall in $q$. The second problem has the same setup except that a query needs to enumerate (rather than count) those occurrences with a small delay. In both problems, our goal is to understand the tradeoff between {\em space usage} and {\em query cost}, or more specifically: (i) given a target on query efficiency, how much pre-computed information about $G$ must we store? (ii) Or conversely, given a budget on space usage, what is the best query time we can hope for? We establish a suite of upper- and lower-bound results on such tradeoffs for various query patterns.
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