Query Workloads for Data Series Indexes

Konstantinos Zoumpatianos, Yin Lou, Themis Palpanas, J. Gehrke
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引用次数: 31

Abstract

Data series are a prevalent data type that has attracted lots of interest in recent years. Most of the research has focused on how to efficiently support similarity or nearest neighbor queries over large data series collections (an important data mining task), and several data series summarization and indexing methods have been proposed in order to solve this problem. Nevertheless, up to this point very little attention has been paid to properly evaluating such index structures, with most previous work relying solely on randomly selected data series to use as queries (with/without adding noise). In this work, we show that random workloads are inherently not suitable for the task at hand and we argue that there is a need for carefully generating a query workload. We define measures that capture the characteristics of queries, and we propose a method for generating workloads with the desired properties, that is, effectively evaluating and comparing data series summarizations and indexes. In our experimental evaluation, with carefully controlled query workloads, we shed light on key factors affecting the performance of nearest neighbor search in large data series collections.
查询数据系列索引的工作负载
数据序列是一种流行的数据类型,近年来吸引了很多人的兴趣。如何高效地支持大型数据序列集合的相似性或最近邻查询(一项重要的数据挖掘任务)是目前研究的重点,为了解决这一问题,已经提出了几种数据序列汇总和索引方法。然而,到目前为止,很少有人关注如何正确地评估这样的索引结构,大多数以前的工作仅仅依赖于随机选择的数据序列作为查询(有/没有添加噪声)。在这项工作中,我们展示了随机工作负载本质上不适合手头的任务,我们认为有必要仔细生成查询工作负载。我们定义了捕获查询特征的度量,并提出了一种方法,用于生成具有所需属性的工作负载,即有效地评估和比较数据序列摘要和索引。在我们的实验评估中,通过仔细控制查询工作负载,我们揭示了影响大型数据系列集合中最近邻搜索性能的关键因素。
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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