基于粒子群算法的多元时间序列数据聚类

A. Ahmadi, Atefeh Mozafarinia, Azadeh Mohebi
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引用次数: 3

摘要

粒子群优化(PSO)是一种实用有效的数据聚类优化方法,近年来在许多应用中得到了应用。虽然各种非进化优化和聚类算法已经在客户细分等应用中应用于聚类多变量时间序列,但由于它们依赖于初始值,并且在操纵多目标时性能较差,通常效果较差。提出了一种多变量时间序列数据聚类的粒子群优化算法。由于时间序列数据有时不具有相同的长度,并且通常存在缺失数据,因此不能对这类数据应用规则的欧氏距离和动态时间翘曲来度量相似度。因此,采用基于主成分分析和马氏距离的混合相似性度量来解决这一问题。将所提方法的计算结果与文献中类似方法的计算结果进行比较,表明了所提方法的优越性。
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Clustering of multivariate time series data using particle swarm optimization
Particle swarm optimization (PSO) is a practical and effective optimization approach that has been applied recently for data clustering in many applications. While various non-evolutionary optimization and clustering algorithms have been applied for clustering multivariate time series in some applications such as customer segmentation, they usually provide poor results due to their dependency on the initial values and their poor performance in manipulating multiple objectives. In this paper, a particle swarm optimization algorithm is proposed for clustering multivariate time series data. Since the time series data sometimes do not have the same length and they usually have missing data, the regular Euclidean distance and dynamic time warping can not be applied for such data to measure the similarity. Therefore, a hybrid similarity measure based on principal component analysis and Mahalanobis distance is applied in order to handle such limitations. The comparison between the results of the proposed method with the similar ones in the literature shows the superiority of the proposed method.
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