最近邻搜索的无监督空间划分

Abrar Fahim, Mohammed Eunus Ali, M. A. Cheema
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引用次数: 0

摘要

高维空间中的近似最近邻搜索(ANNS)对于处理大量数据的许多现实应用(例如,电子商务,网络,多媒体等)至关重要。本文提出了一个端到端学习框架,该框架使用自定义损失函数将划分(ANNS的一个关键步骤)和学习搜索步骤耦合在一起。我们提出的解决方案的一个关键优势是它不需要任何昂贵的数据集预处理,这是最先进方法的关键限制之一。我们通过制定一个多目标自定义损失函数来实现上述边缘,该函数不需要地面真值标签来量化给定数据空间分区的质量,使其完全无监督。我们还提出了一种集成技术,通过在损失函数中添加不同的输入权值来训练模型的集成,以提高搜索质量。在ANNS的几个标准基准测试中,我们表明我们的方法击败了最先进的空间划分方法和无处不在的k均值聚类方法,同时使用更少的参数和更短的离线训练时间。我们还表明,将我们的空间分区策略结合到最先进的ann技术(如ScaNN)中可以显着提高其性能。最后,我们提出了我们的无监督分区方法,作为许多广泛使用的聚类方法(如K-means聚类和DBSCAN)的有前途的替代方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unsupervised Space Partitioning for Nearest Neighbor Search
Approximate Nearest Neighbor Search (ANNS) in high dimensional spaces is crucial for many real-life applications (e.g., e-commerce, web, multimedia, etc.) dealing with an abundance of data. This paper proposes an end-to-end learning framework that couples the partitioning (one critical step of ANNS) and learning-to-search steps using a custom loss function. A key advantage of our proposed solution is that it does not require any expensive pre-processing of the dataset, which is one of the critical limitations of the state-of-the-art approach. We achieve the above edge by formulating a multi-objective custom loss function that does not need ground truth labels to quantify the quality of a given data-space partition, making it entirely unsupervised. We also propose an ensembling technique by adding varying input weights to the loss function to train an ensemble of models to enhance the search quality. On several standard benchmarks for ANNS, we show that our method beats the state-of-the-art space partitioning method and the ubiquitous K-means clustering method while using fewer parameters and shorter offline training times. We also show that incorporating our space-partitioning strategy into state-of-the-art ANNS techniques such as ScaNN can improve their performance significantly. Finally, we present our unsupervised partitioning approach as a promising alternative to many widely used clustering methods, such as K-means clustering and DBSCAN.
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