具有概率质量保证的数据序列渐进式相似性搜索

Anna Gogolou, Theophanis Tsandilas, Karima Echihabi, A. Bezerianos, Themis Palpanas
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引用次数: 28

摘要

处理不断增加的数据序列量的现有系统不能保证交互响应时间,即使是对于相似度搜索等基本任务也是如此。因此,有必要开发分析方法,在最终和精确的结果计算出来之前,通过提供渐进的结果来支持探索和决策。以往的研究在处理大规模数据序列时,效率和准确性都不高。我们提出并实验评估了一种新的基于概率学习的方法,该方法为渐进式最近邻(NN)查询应答提供了质量保证。我们提供了在相似性搜索过程中越来越好的最终答案的初始和渐进估计,以及渐进查询的合适停止标准。对合成和各种真实数据集的实验表明,我们的预测方法构成了该问题的第一个实用解决方案,显著优于竞争方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data Series Progressive Similarity Search with Probabilistic Quality Guarantees
Existing systems dealing with the increasing volume of data series cannot guarantee interactive response times, even for fundamental tasks such as similarity search. Therefore, it is necessary to develop analytic approaches that support exploration and decision making by providing progressive results, before the final and exact ones have been computed. Prior works lack both efficiency and accuracy when applied to large-scale data series collections. We present and experimentally evaluate a new probabilistic learning-based method that provides quality guarantees for progressive Nearest Neighbor (NN) query answering. We provide both initial and progressive estimates of the final answer that are getting better during the similarity search, as well suitable stopping criteria for the progressive queries. Experiments with synthetic and diverse real datasets demonstrate that our prediction methods constitute the first practical solution to the problem, significantly outperforming competing approaches.
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