SummerTime:变长时间序列综述及其在体育活动分析中的应用

K. Amaral, Zihan Li, W. Ding, S. Crouter, Ping Chen
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引用次数: 0

摘要

SummerTime试图总结全局时间序列信号,并提供可变长度时间序列的固定长度、稳健表示。许多机器学习方法依赖于具有固定数量特征的数据实例。因此,这些方法不能直接应用于可变长度的时间序列数据。现有的方法,如滑动窗口可能会丢失少数局部信息。SummerTime方法进行的汇总将是一个固定长度的特征向量,它可以用来代替与经典机器学习方法一起使用的时间序列数据集。我们在时间序列中的小的相同长度的不相交窗口上使用高斯混合模型(GMM)将局部数据分组到聚类中。每个集群的时间序列成员率将是摘要中的一个特征。通过使用变分方法,GMM收敛到更稳健的混合,这意味着聚类更能抵抗噪声和过拟合。此外,该模型自然能够收敛到适当的聚类计数。我们在一个具有挑战性的真实世界数据集上验证了我们的方法,该数据集是一个具有可变长度时间序列结构的不平衡体力活动数据集。我们将我们的结果与最先进的研究进行了比较,并通过仅使用摘要进行分类来显示高质量的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SummerTime: Variable-length Time Series Summarization with Application to Physical Activity Analysis
SummerTime seeks to summarize global time-series signals and provides a fixed-length, robust representation of the variable-length time series. Many machine learning methods depend on data instances with a fixed number of features. As a result, those methods cannot be directly applied to variable-length time series data. Existing methods such as sliding windows can lose minority local information. Summarization conducted by the SummerTime method will be a fixed-length feature vector which can be used in place of the time series dataset for use with classical machine learning methods. We use Gaussian Mixture models (GMM) over small same-length disjoint windows in the time series to group local data into clusters. The time series’ rate of membership for each cluster will be a feature in the summarization. By making use of variational methods, GMM converges to a more robust mixture, meaning the clusters are more resistant to noise and overfitting. Further, the model is naturally capable of converging to an appropriate cluster count. We validate our method on a challenging real-world dataset, an imbalanced physical activity dataset with a variable-length time series structure. We compare our results to state-of-the-art studies and show high-quality improvement by classifying with only the summarization.
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CiteScore
10.30
自引率
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