时间序列簇核

Karl Øyvind Mikalsen, F. Bianchi, C. Soguero-Ruíz, R. Jenssen
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引用次数: 1

摘要

提出了多变量缺失数据时间序列的聚类核算法。我们的方法利用了高斯混合模型(GMM)与经验先验分布增强的缺失数据处理特性。此外,我们利用集成学习方法通过组合多个GMM的聚类结果形成最终核来确保对参数的鲁棒性。在对比实验中,我们证明了TCK对参数选择具有鲁棒性,并说明了它处理多变量时间序列的能力,无论有无丢失数据。
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The time series cluster kernel
This paper presents the time series cluster kernel (TCK) for multivariate time series with missing data. Our approach leverages the missing data handling properties of Gaussian mixture models (GMM) augmented with empirical prior distributions. Further, we exploit an ensemble learning approach to ensure robustness to parameters by combining the clustering results of many GMM to form the final kernel. In comparative experiments, we demonstrate that the TCK is robust to parameter choices and illustrate its capabilities of dealing with multivariate time series, both with and without missing data.
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