近似最近邻搜索的优化产品量化

T. Ge, Kaiming He, Qifa Ke, Jian Sun
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引用次数: 367

摘要

积量化是一种有效的矢量量化方法,可以对高维矢量进行紧凑编码,实现快速的近似最近邻搜索。乘积量化的本质是将原来的高维空间分解为有限个低维子空间的笛卡尔积,然后分别进行量化。最优空间分解对人工神经网络的搜索性能很重要,但仍然没有得到解决。本文利用空间分解和量化码本,通过最小化量化失真来优化积量化。我们提出了两种新的优化方法:一种非参数方法交替解决两个较小的子问题,一种参数方法保证在输入数据服从高斯分布的情况下获得最优解。实验表明,我们的优化方法大大提高了人工神经网络搜索的产品量化精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimized Product Quantization for Approximate Nearest Neighbor Search
Product quantization is an effective vector quantization approach to compactly encode high-dimensional vectors for fast approximate nearest neighbor (ANN) search. The essence of product quantization is to decompose the original high-dimensional space into the Cartesian product of a finite number of low-dimensional subspaces that are then quantized separately. Optimal space decomposition is important for the performance of ANN search, but still remains unaddressed. In this paper, we optimize product quantization by minimizing quantization distortions w.r.t. the space decomposition and the quantization codebooks. We present two novel methods for optimization: a non-parametric method that alternatively solves two smaller sub-problems, and a parametric method that is guaranteed to achieve the optimal solution if the input data follows some Gaussian distribution. We show by experiments that our optimized approach substantially improves the accuracy of product quantization for ANN search.
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