LSH-Based Probabilistic Pruning of Inverted Indices for Sets and Ranked Lists

K. Pal, S. Michel
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Abstract

We address the problem of index pruning without compromising the quality of ad-hoc similarity search among sets and ranked lists. We discuss three different ways to prune the index structure and, by linking the index structure with the concept of Locality Sensitive Hashing (LSH), we introduce two solutions to query processing over the pruned index. Through a probabilistic analysis we ensure that a user-defined recall goal is still guaranteed. We are able to formulate an optimization problem that can determine the optimal pruning factor for all three pruning methods. The experimental evaluations over real-world data validate that the optimal pruning factor indeed ensures the recall goal without any significant effect on the quality of similarity search on a much smaller index.
基于lsh的集和排位表倒排索引的概率剪枝
我们解决了索引修剪的问题,而不影响集和排名表之间的临时相似度搜索的质量。我们讨论了三种不同的方法来修剪索引结构,并且通过将索引结构与位置敏感散列(Locality Sensitive hash, LSH)的概念联系起来,我们引入了两种解决方案来对修剪后的索引进行查询处理。通过概率分析,我们确保用户定义的召回目标仍然得到保证。我们能够制定一个优化问题,可以确定所有三种修剪方法的最优修剪因子。对真实数据的实验评估验证了最优修剪因子确实可以确保召回目标,而不会对小得多的索引上的相似度搜索质量产生任何显着影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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