Improving performance of similarity measures for uncertain time series using preprocessing techniques

M. Orang, Nematollaah Shiri
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引用次数: 10

Abstract

We study the impact of preprocessing techniques on performance and effectiveness of the similarity measures for uncertain time series. Some existing work on uncertain time series use the same similarity measures developed for standard time series, to which we refer as traditional similarity measures. More recently, a number of new similarity measures have been proposed for uncertain time series, to which we refer as uncertain similarity measures. However, they have been shown not to be as effective as the traditional measures. In this work, we show that the performance of uncertain similarity measures can be improved through preprocessing techniques. We establish this through extensive experiments using the UCR benchmark data. Our results in fact indicate that the uncertain similarity measures together with preprocessing outperform the traditional similarity measures.
利用预处理技术改进不确定时间序列相似性度量的性能
我们研究了预处理技术对不确定时间序列相似性度量的性能和有效性的影响。现有的一些研究不确定时间序列的工作使用了与标准时间序列相同的相似性度量,我们称之为传统的相似性度量。最近,针对不确定时间序列提出了一些新的相似度度量,我们称之为不确定相似度度量。然而,它们已被证明不如传统措施有效。在这项工作中,我们表明通过预处理技术可以提高不确定相似度量的性能。我们通过使用UCR基准数据的广泛实验建立了这一点。事实上,我们的结果表明,不确定的相似度度量加上预处理优于传统的相似度度量。
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