Querying Similar Multi-Dimensional Time Series with a Spatial Database

Zheren Liu, Chaogui Kang, Xiaoyue Xing
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Abstract

Similar time series search is one of the most important time series mining tasks in our daily life. As recent advances in sensor technologies accumulate abundant multi-dimensional time series data associated with multivariate quantities, it becomes a privilege to adapt similar time series searches for large-scale and multi-dimensional time series data. However, traditional similar time series search methods are mainly designed for one-dimensional time series, while advanced methods applicable for multi-dimensional time series data are largely immature and, more importantly, are not friendly to users from the domain of geography. As an alternative, we propose a novel method to search similar multi-dimensional time series with spatial databases. Compared with traditional methods that often conduct the similarity search based on features of the raw time series data sequence, the proposed method stores multi-dimensional time series as spatial objects in a spatial database, and then searches similar time series based on their spatial features. To demonstrate the validity of the proposed method, we analyzed the correlation between temporal features of the raw time series and spatial features of their corresponding spatial objects theoretically and empirically. Results indicate that the proposed method can not only support similar multi-dimensional time series searches but also markedly improve its efficiency under many specific scenarios. We believe that such a new paradigm will shed further light on the similarity search in large-scale multi-dimensional time series data, and will lower the barrier for users familiar with spatial databases to conduct complex time series mining tasks.
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利用空间数据库查询相似多维时间序列
相似时间序列搜索是我们日常生活中最重要的时间序列挖掘任务之一。随着近年来传感器技术的进步,积累了大量与多变量量相关的多维时间序列数据,使类似的时间序列搜索适应大规模和多维时间序列数据成为一种特权。然而,传统的相似时间序列搜索方法主要是针对一维时间序列设计的,而适用于多维时间序列数据的先进方法在很大程度上是不成熟的,更重要的是对地理领域的用户不友好。作为替代方案,我们提出了一种利用空间数据库搜索相似多维时间序列的新方法。与传统的基于原始时间序列数据序列特征进行相似度搜索的方法相比,该方法将多维时间序列作为空间对象存储在空间数据库中,然后根据其空间特征搜索相似时间序列。为了验证该方法的有效性,我们从理论和经验上分析了原始时间序列的时间特征与其对应空间对象的空间特征之间的相关性。结果表明,该方法不仅可以支持相似的多维时间序列搜索,而且在许多特定场景下也显著提高了搜索效率。我们相信,这种新的范式将进一步揭示大规模多维时间序列数据的相似性搜索,并为熟悉空间数据库的用户进行复杂的时间序列挖掘任务降低障碍。
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