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Salient Subsequence Learning for Time Series Clustering

机译:时间序列聚类的显着子序列学习

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摘要

Time series has been a popular research topic over the past decade. Salient subsequences of time series that can benefit the learning task, e.g., classification or clustering, are called shapelets. Shapelet-based time series learning extracts these types of salient subsequences with highly informative features from a time series. Most existing methods for shapelet discovery must scan a large pool of candidate subsequences, which is a time-consuming process. A recent work, [1], uses regression learning to discover shapelets in a time series; however, it only considers learning shapelets from labeled time series data. This paper proposes an Unsupervised Salient Subsequence Learning (USSL) model that discovers shapelets without the effort of labeling. We developed this new learning function by integrating the strengths of shapelet learning, shapelet regularization, spectral analysis and pseudo-label to simultaneously and automatically learn shapelets to help clustering unlabeled time series better. The optimization model is iteratively solved via a coordinate descent algorithm. Experiments show that our USSL can learn meaningful shapelets, with promising results on real-world and synthetic data that surpass current state-of-the-art unsupervised time series learning methods.
机译:在过去的十年中,时间序列一直是热门的研究主题。可以使学习任务受益的时间序列的显着子序列,例如分类或聚类,被称为shapelet。基于Shapelet的时间序列学习从时间序列中提取具有重要信息的这些显着子序列。用于Shapelet发现的大多数现有方法必须扫描大量候选子序列,这是一个耗时的过程。最近的工作[1],使用回归学习来发现时间序列中的形状。但是,它仅考虑从标记的时间序列数据中学习形状。本文提出了一种无需监督即可发现形状的无监督显着子序列学习(USSL)模型。我们通过整合小波学习,小波正则化,频谱分析和伪标签的优势来开发此新的学习功能,以同时自动学习小波,以帮助更好地聚类未标记的时间序列。优化模型通过坐标下降算法迭代求解。实验表明,我们的USSL可以学习有意义的形状,并在现实世界和合成数据上取得了可喜的成果,超越了当前最新的无监督时间序列学习方法。

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