相关时间序列的交互式探索

Daniel Petrov, Rakan Alseghayer, M. Sharaf, Panos K. Chrysanthis, Alexandros Labrinidis
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引用次数: 7

摘要

监控应用程序的快速增长导致了生成的时间序列数据的空前数量。数据分析师通常会探索如此大量的时间序列数据,以寻找有价值的见解。其中一种见解是找到时间序列对,其中值的子序列表现出一定程度的相关性。然而,由于探索性查询最初往往是模糊和不精确的,因此分析人员通常会使用一个查询的结果作为制定新查询的跳板,在新查询中进一步细化相关规范。因此,为分析人员的探索性查询提供快速的初始结果是至关重要的,这样可以加快精化过程。当在由大量长时间序列组成的大型搜索空间中探索相关性时,这个目标是具有挑战性的。在这项工作中,我们提出的搜索算法恰恰解决了这一挑战。我们工作的主要思想是设计基于优先级的搜索算法,有效地导航相当大的空间,以快速找到探索性查询的初始结果。实验结果表明,我们的算法优于现有的算法,并且在探索大型时间序列数据时实现了高度的交互性。
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Interactive Exploration of Correlated Time Series
The rapid growth of monitoring applications has led to unprecedented amounts of generated time series data. Data analysts typically explore such large volumes of time series data looking for valuable insights. One such insight is finding pairs of time series, in which subsequences of values exhibit certain levels of correlation. However, since exploratory queries tend to be initially vague and imprecise, an analyst will typically use the results of one query as a springboard to formulating a new one, in which the correlation specifications are further refined. As such, it is essential to provide analysts with quick initial results to their exploratory queries, which allows for speeding up the refinement process. This goal is challenging when exploring the correlation in a large search space that consists of a big number of long time series. In this work we propose search algorithms that address precisely that challenge. The main idea underlying our work is to design priority-based search algorithms that efficiently navigate the rather large space to quickly find the initial results of an exploratory query. Our experimental results show that our algorithms outperform existing ones and enable high degree of interactivity in exploring large time series data.
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