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首页> 外文期刊>Cybernetics, IEEE Transactions on >Unsupervised Classification of Multivariate Time Series Using VPCA and Fuzzy Clustering With Spatial Weighted Matrix Distance
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Unsupervised Classification of Multivariate Time Series Using VPCA and Fuzzy Clustering With Spatial Weighted Matrix Distance

机译:使用VPCA与空间加权矩阵距离的多变量时间序列的无调节分类

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摘要

Due to high dimensionality and multiple variables, unsupervised classification of multivariate time series (MTS) involves more challenging problems than those of univariate ones. Unlike the vectorization of a feature matrix in traditional clustering algorithms, an unsupervised pattern recognition scheme based on matrix data is proposed for MTS samples in this paper. To reduce the computational load and time consumption, a novel variable-based principal component analysis (VPCA) is first devised for the dimensionality reduction of MTS samples. Afterward, a spatial weighted matrix distance-based fuzzy clustering (SWMDFC) algorithm is proposed to directly group MTS samples into clusters as well as preserve the structure of the data matrix. The spatial weighted matrix distance (SWMD) integrates the spatial dimensionality difference of elements of data into the distance of MST pairs. In terms of the SWMD, the MTS samples are clustered without vectorization in the dimensionality-reduced feature matrix space. Finally, three open-access datasets are utilized for the validation of the proposed unsupervised classification scheme. The results show that the VPCA can capture more features of MTS data than principal component analysis (PCA) and 2-D PCA. Furthermore, the clustering performance of SWMDFC is superior to that of fuzzy ${c}$ -means clustering algorithms based on the Euclidean distance or image Euclidean distance.
机译:由于高维度和多个变量,多变量时间序列(MTS)的无监督分类涉及比单变量的问题更具挑战性问题。与传统聚类算法中特征矩阵的矢量化不同,提出了基于矩阵数据的无监督模式识别方案,用于本文的MTS样本。为了减少计算负荷和时间消耗,首先设计一种新的基于变量的主成分分析(VPCA),以用于MTS样本的维度降低。之后,提出了一种基于空间加权矩阵距离的模糊聚类(SWMDFC)算法,以将MTS样本直接分成簇,并保持数据矩阵的结构。空间加权矩阵距离(SWMD)将数据元素的空间维度差异集成到MST对的距离中。就SWMD而言,MTS样品被聚集而不在维度降低的特征矩阵空间中的延伸。最后,三个开放式访问数据集用于验证所提出的无监督分类方案。结果表明,VPCA可以捕获MTS数据的更多特征,而不是主成分分析(PCA)和2-D PCA。此外,SWMDFC的聚类性能优于基于欧几里德距离或图像欧几里德距离的模糊$ {C} $ -means聚类算法的群集性能。

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