Data Management and Algorithms Open access

Unified Dominance Graph for Interval-Predicate Approximate Nearest Neighbor Search

Kwun Hang Lau, Ruiyuan Zhang, Elton Chun-Chai Li, Wun Yu Chan and 2 more

arXiv (Cornell University) | Jun 23, 2026

Abstract

Abstract

Approximate Nearest Neighbor Search (ANNS) is a core primitive for unstructured data retrieval. Real-world applications--such as temporal databases, financial data analysis, and retrieval-augmented generation--often require hybrid queries whose valid objects are constrained by continuous interval attributes, such as lifespans or price ranges. We study Interval-Predicate ANNS (IPANNS), where validity is determined by a predicate between an object interval and a query interval. Existing range-filtering ANNS (RFANNS) methods are designed for single-dimensional scalar filters, but interval predicates such as containment and overlap rely on two coupled endpoint constraints. Treating endpoints as independent scalar attributes can incur large intersection overhead, while containment-specific methods lack a generalized indexing abstraction. In this paper, we propose the Unified Dominance Graph (UDG), a graph-indexing framework for the closed two-bound conjunctive fragment of IPANNS. For a chosen interval predicate, UDG maps object and query endpoints into a normalized two-dimensional dominance space and builds a dominance-labeled graph over the transformed coordinates. Containment, overlap, and other supported endpoint-bound predicates therefore reuse the same construction and search algorithms after semantic mapping, while each UDG instance remains tied to its selected predicate. UDG compresses query-state-specific proximity graphs into one compact index. To improve graph search under restrictive interval filters, we add validity-preserving patch edges that provide routing choices when few objects remain valid. Extensive evaluations on standard benchmarks and real-world datasets show that UDG achieves stable query performance across multiple interval relations and workloads, significantly outperforming existing hybrid search baselines while maintaining low indexing overhead.

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Authors

Researchers on this paper

Kwun Hang Lau

first

Ruiyuan Zhang

middle

Elton Chun-Chai Li

middle

Wun Yu Chan

middle

Xiaojun Cheng

middle | ORCID 0000-0002-3568-0603

X J Zhou

last

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Citation

BibTeX

@article{Lau2026Unified,
  title = {Unified Dominance Graph for Interval-Predicate Approximate Nearest Neighbor Search},
  author = {Kwun Hang Lau and Ruiyuan Zhang and Elton Chun-Chai Li and Wun Yu Chan and Xiaojun Cheng and X J Zhou},
  journal = {arXiv (Cornell University)},
  year = {2026},
  doi = {10.48550/arxiv.2606.24204},
  url = {https://doi.org/10.48550/arxiv.2606.24204}
}

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