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CRouting: Reducing Expensive Distance Calls in Graph-Based Approximate Nearest Neighbor Search

30 August 2025
Zhenxin Li
Shuibing He
Jiahao Guo
Xuechen Zhang
Xian-He Sun
Gang Chen
ArXiv (abs)PDFHTMLGithub (6★)
Main:10 Pages
22 Figures
Bibliography:3 Pages
8 Tables
Abstract

Approximate nearest neighbor search (ANNS) is a crucial problem in information retrieval and AI applications. Recently, there has been a surge of interest in graph-based ANNS algorithms due to their superior efficiency and accuracy. However, the repeated computation of distances in high-dimensional spaces constitutes the primary time cost of graph-based methods. To accelerate the search, we propose a novel routing strategy named CRouting, which bypasses unnecessary distance computations by exploiting the angle distributions of high-dimensional vectors. CRouting is designed as a plugin to optimize existing graph-based search with minimal code modifications. Our experiments show that CRouting reduces the number of distance computations by up to 41.5% and boosts queries per second by up to 1.48×\times× on two predominant graph indexes, HNSW and NSG. Code is publicly available atthis https URL.

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