通过层次积量化加速近似近邻搜索

Ameer Abdelhadi, C. Bouganis, G. Constantinides
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引用次数: 7

摘要

在许多机器学习应用中,一个基本的重复任务是在高维度量空间中搜索最近邻。为了回答大规模问题中的查询,最先进的方法采用了近似最近邻(ANN)搜索,一种以高概率返回最近邻的搜索,以及压缩数据集的技术。基于产品量化(PQ)的人工神经网络搜索方法在分类、回归和信息检索等问题上表现出了最先进的性能。数据集被编码成多个低维码本的笛卡尔积,从而实现更快的搜索和更高的压缩。基于pq的人工神经网络搜索方法本质上是并行的,可用于硬件加速。本文提出了一种新颖的基于分层PQ (HPQ)的人工神经网络搜索方法,以及一种fpga定制的实现架构,其实现优于当前最先进的系统。HPQ逐渐细化了搜索空间,减少了数据比较的数量,实现了流水线搜索。在Stratix 10 FPGA设备上的架构映射演示了×250超过当前最先进系统的加速,为处理更大的数据集和/或改进当前系统的查询时间开辟了空间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Accelerated Approximate Nearest Neighbors Search Through Hierarchical Product Quantization
A fundamental recurring task in many machine learning applications is the search for the Nearest Neighbor in high dimensional metric spaces. Towards answering queries in large scale problems, state-of-the-art methods employ Approximate Nearest Neighbors (ANN) search, a search that returns the nearest neighbor with high probability, as well as techniques that compress the dataset. Product-Quantization (PQ) based ANN search methods have demonstrated state-of-the-art performance in several problems, including classification, regression and information retrieval. The dataset is encoded into a Cartesian product of multiple low-dimensional codebooks, enabling faster search and higher compression. Being intrinsically parallel, PQ-based ANN search approaches are amendable for hardware acceleration. This paper proposes a novel Hierarchical PQ (HPQ) based ANN search method as well as an FPGA-tailored architecture for its implementation that outperforms current state of the art systems. HPQ gradually refines the search space, reducing the number of data compares and enabling a pipelined search. The mapping of the architecture on a Stratix 10 FPGA device demonstrates over ×250 speedups over current state-of-the-art systems, opening the space for addressing larger datasets and/or improving the query times of current systems.
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