Score: 0

Space-Time Tradeoffs for Spatial Conjunctive Queries

Published: September 12, 2025 | arXiv ID: 2509.10050v1

By: Aryan Esmailpour, Xiao Hu, Stavros Sintos

Potential Business Impact:

Finds data patterns faster and uses less space.

Business Areas:
Geospatial Data and Analytics, Navigation and Mapping

Given a conjunctive query and a database instance, we aim to develop an index that can efficiently answer spatial queries on the results of a conjunctive query. We are interested in some commonly used spatial queries, such as range emptiness, range count, and nearest neighbor queries. These queries have essential applications in data analytics, such as filtering relational data based on attribute ranges and temporal graph analysis for counting graph structures like stars, paths, and cliques. Furthermore, this line of research can accelerate relational algorithms that incorporate spatial queries in their workflow, such as relational clustering. Known approaches either have to spend $\tilde{O}(N)$ query time or use space as large as the number of query results, which are inefficient or unrealistic to employ in practice. Hence, we aim to construct an index that answers spatial conjunctive queries in both time- and space-efficient ways. In this paper, we establish lower bounds on the tradeoff between answering time and space usage. For $k$-star (resp. $k$-path) queries, we show that any index for range emptiness, range counting or nearest neighbor queries with $T$ answering time requires $\Omega\left(N+\frac{N^k}{T^k}\right)$ (resp. $\Omega\left(N+\frac{N^2}{T^{2/(k-1)}}\right)$) space. Then, we construct optimal indexes for answering range emptiness and range counting problems over $k$-star and $k$-path queries. Extending this result, we build an index for hierarchical queries. By resorting to the generalized hypertree decomposition, we can extend our index to arbitrary conjunctive queries for supporting spatial conjunctive queries. Finally, we show how our new indexes can be used to improve the running time of known algorithms in the relational setting.

Country of Origin
🇺🇸 United States

Page Count
28 pages

Category
Computer Science:
Databases