基于无监督张量的多变量时间序列特征提取与离群点检测

Kiyotaka Matsue, M. Sugiyama
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引用次数: 2

摘要

尽管寻找有用的特征向量表示是多变量时间序列数据分析的关键任务之一,但寻找有用的特征仍然具有挑战性,因为需要考虑时间和变量之间的关联。为了克服这个问题,我们提出了一种多变量时间序列的无监督特征提取算法,称为UFEKT(使用核方法和塔克分解的无监督特征提取)。我们的算法(1)从每个时间序列的子序列构建一个核矩阵来考虑时间明智的关联;(2)从核矩阵构建一个张量,并执行Tucker分解来考虑变量明智的关联。以完全无监督的方式将分解张量的因子矩阵行表示为特征表示,可用于后续的机器学习问题。我们在无监督离群点检测场景中使用合成和真实多变量时间序列数据集的实验结果表明,当将我们的算法用作离群点检测算法的预处理时,我们的算法提高了检测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unsupervised Tensor based Feature Extraction and Outlier Detection for Multivariate Time Series
Although finding useful feature vector representation is one of crucial tasks as data analysis for multivariate time series, finding useful features is still challenging because both time-wise and variable-wise associations should be taken into account. To overcome this issue, we present an unsupervised feature extraction algorithm for multivariate time series, called UFEKT (Unsupervised Feature Extraction using Kernel Method and Tucker Decomposition). Our algorithm (1) constructs a kernel matrix from subsequences of each time series to account for time-wise association and (2) constructs a single tensor from the kernel matrices and performs Tucker decomposition to account for variable-wise association. Feature representation is obtained as rows of the factor matrix of the decomposed tensor in a fully unsupervised manner, which can be used to subsequent machine learning problems. Our experimental results using synthetic and real-world multivariate time series datasets in the unsupervised outlier detection scenario show that our algorithm improves detection accuracy when it is used as pre-processing for outlier detection algorithms.
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