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Probabilistic Kernel Function for Fast Angle Testing

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In this paper, we study the angle testing problem in the context of similarity search in high-dimensional Euclidean spaces and propose two projection-based probabilistic kernel functions, one designed for angle comparison and the other for angle thresholding. Unlike existing approaches that rely on random projection vectors drawn from Gaussian distributions, our approach leverages reference angles and adopts a deterministic structure for the projection vectors. Notably, our kernel functions do not require asymptotic assumptions, such as the number of projection vectors tending to infinity, and can be theoretically and experimentally shown to outperform Gaussian-distribution-based kernel functions. We apply the proposed kernel function to Approximate Nearest Neighbor Search (ANNS) and demonstrate that our approach achieves a 2.5x--3x higher query-per-second (QPS) throughput compared to the widely-used graph-based search algorithm HNSW.

Kejing Lu, Chuan Xiao, Yoshiharu Ishikawa• 2025

Related benchmarks

TaskDatasetResultRank
k-MIPSWORD
Recall@10 (Probe)51.238
12
Approximate Nearest Neighbor SearchANNS Empirical Evaluation Suite
QPS vs Recall Tier-3
9
k-MIPSGloVe1M
Recall@10 (Probe)86.6
6
Maximum Inner Product SearchGloVe 2M
Probe@1093.9
6
k-Maximum Inner Product SearchGloVe 1M
Probe@103.069
3
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