DTW-D: time series semi-supervised learning from a single example

Yanping Chen, Bing Hu, Eamonn J. Keogh, Gustavo E. A. P. A. Batista
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引用次数: 111

Abstract

Classification of time series data is an important problem with applications in virtually every scientific endeavor. The large research community working on time series classification has typically used the UCR Archive to test their algorithms. In this work we argue that the availability of this resource has isolated much of the research community from the following reality, labeled time series data is often very difficult to obtain. The obvious solution to this problem is the application of semi-supervised learning; however, as we shall show, direct applications of off-the-shelf semi-supervised learning algorithms do not typically work well for time series. In this work we explain why semi-supervised learning algorithms typically fail for time series problems, and we introduce a simple but very effective fix. We demonstrate our ideas on diverse real word problems.
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DTW-D:单例时间序列半监督学习
时间序列数据的分类是一个重要的问题与应用几乎每一个科学努力。从事时间序列分类的大型研究团体通常使用UCR Archive来测试他们的算法。在这项工作中,我们认为这种资源的可用性已经将许多研究界与以下现实隔离开来,标记的时间序列数据通常很难获得。解决这个问题的显而易见的方法是应用半监督学习;然而,正如我们将展示的那样,现成的半监督学习算法的直接应用通常不适用于时间序列。在这项工作中,我们解释了为什么半监督学习算法通常无法解决时间序列问题,并介绍了一种简单但非常有效的修复方法。我们在不同的实际问题上展示我们的想法。
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