English

Learning Cluster Representatives for Approximate Nearest Neighbor Search

Information Retrieval 2024-12-10 v1

Abstract

Developing increasingly efficient and accurate algorithms for approximate nearest neighbor search is a paramount goal in modern information retrieval. A primary approach to addressing this question is clustering, which involves partitioning the dataset into distinct groups, with each group characterized by a representative data point. By this method, retrieving the top-k data points for a query requires identifying the most relevant clusters based on their representatives -- a routing step -- and then conducting a nearest neighbor search within these clusters only, drastically reducing the search space. The objective of this thesis is not only to provide a comprehensive explanation of clustering-based approximate nearest neighbor search but also to introduce and delve into every aspect of our novel state-of-the-art method, which originated from a natural observation: The routing function solves a ranking problem, making the function amenable to learning-to-rank. The development of this intuition and applying it to maximum inner product search has led us to demonstrate that learning cluster representatives using a simple linear function significantly boosts the accuracy of clustering-based approximate nearest neighbor search.

Keywords

Cite

@article{arxiv.2412.05921,
  title  = {Learning Cluster Representatives for Approximate Nearest Neighbor Search},
  author = {Thomas Vecchiato},
  journal= {arXiv preprint arXiv:2412.05921},
  year   = {2024}
}
R2 v1 2026-06-28T20:26:58.665Z