FARGO: Fast Maximum Inner Product Search via Global Multi-Probing

Author:

Zhao Xi1,Zheng Bolong1,Yi Xiaomeng2,Luan Xiaofan2,Xie Charles2,Zhou Xiaofang3,Jensen Christian S.4

Affiliation:

1. Huazhong University of Science and Technology

2. Zilliz

3. Hong Kong University of Science and Technology

4. Aalborg University

Abstract

Maximum inner product search (MIPS) in high-dimensional spaces has wide applications but is computationally expensive due to the curse of dimensionality. Existing studies employ asymmetric transformations that reduce the MIPS problem to a nearest neighbor search (NNS) problem, which can be solved using locality-sensitive hashing (LSH). However, these studies usually maintain multiple hash tables and locally examine them one by one, which may cause additional costs on probing unnecessary points. In addition, LSH is applied without taking into account the properties of the inner product. In this paper, we develop a fast search framework FARGO for MIPS on large-scale, high-dimensional data. We propose a global multi-probing (GMP) strategy that exploits the properties of the inner product to globally examine high quality candidates. In addition, we develop two optimization techniques. First, different with existing transformations that introduce either distortion errors or data distribution imbalances, we design a novel transformation, called random XBOX transformation, that avoids the negative effects of data distribution imbalances. Second, we propose a global adaptive early termination condition that finds results quickly and offers theoretical guarantees. We conduct extensive experiments with real-world data that offer evidence that FARGO is capable of outperforming existing proposals in terms of both accuracy and efficiency.

Publisher

Association for Computing Machinery (ACM)

Subject

General Earth and Planetary Sciences,Water Science and Technology,Geography, Planning and Development

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5. Yoram Bachrach Yehuda Finkelstein Ran Gilad-Bachrach Liran Katzir Noam Koenigstein Nir Nice and Ulrich Paquet. 2014. Speeding up the Xbox recommender system using a Euclidean transformation for inner-product spaces. In RecSys. 257--264. Yoram Bachrach Yehuda Finkelstein Ran Gilad-Bachrach Liran Katzir Noam Koenigstein Nir Nice and Ulrich Paquet. 2014. Speeding up the Xbox recommender system using a Euclidean transformation for inner-product spaces. In RecSys. 257--264.

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