时间序列数据的可变长度查询

Tamer Kahveci, Ambuj K. Singh
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引用次数: 145

摘要

在时间序列中寻找相似的模式是一个研究得很好的问题。当前的大多数技术都能很好地处理预先指定长度的查询,但不适合可变长度的查询。我们提出了一种新的索引技术,它可以很好地用于可变长度查询。其核心思想是为给定数据集以不同的分辨率存储索引结构。分辨率是基于小波的。对于给定的查询,将生成许多不同分辨率的子查询。子查询的范围将根据先前子查询的结果逐步细化。我们的实验表明,我们的方法的总成本比目前包括线性扫描在内的技术低4到20倍。由于需要在多个分辨率级别上存储信息,因此我们的方法的存储需求可能很大。在本文的第二部分,我们展示了如何在最小化信息丢失的情况下压缩索引信息。根据我们的实验结果,即使将索引的大小压缩到五分之一,我们的方法的总成本也比目前的技术低3到15倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Variable length queries for time series data
Finding similar patterns in a time sequence is a well-studied problem. Most of the current techniques work well for queries of a prespecified length, but not for variable length queries. We propose a new indexing technique that works well for variable length queries. The central idea is to store index structures at different resolutions for a given dataset. The resolutions are based on wavelets. For a given query, a number of subqueries at different resolutions are generated. The ranges of the subqueries are progressively refined based on results from previous subqueries. Our experiments show that the total cost for our method is 4 to 20 times less than the current techniques including linear scan. Because of the need to store information at multiple resolution levels, the storage requirement of our method could potentially be large. In the second part of the paper we show how the index information can be compressed with minimal information loss. According to our experimental results, even after compressing the size of the index to one fifth, the total cost of our method is 3 to 15 times less than the current techniques.
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