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A Hybrid Algorithm for Clustering of Time Series Data Based on Affinity Search Technique

机译:基于亲和力搜索技术的时间序列数据混合聚类算法

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摘要

Time series clustering is an important solution to various problems in numerous fields of research, including business, medical science, and finance. However, conventional clustering algorithms are not practical for time series data because they are essentially designed for static data. This impracticality results in poor clustering accuracy in several systems. In this paper, a new hybrid clustering algorithm is proposed based on the similarity in shape of time series data. Time series data are first grouped as subclusters based on similarity in time. The subclusters are then merged using the k-Medoids algorithm based on similarity in shape. This model has two contributions: (1) it is more accurate than other conventional and hybrid approaches and (2) it determines the similarity in shape among time series data with a low complexity. To evaluate the accuracy of the proposed model, the model is tested extensively using syntactic and real-world time series datasets.
机译:时间序列聚类是解决众多研究领域(包括商业,医学和金融)中各种问题的重要解决方案。但是,传统的聚类算法对于时间序列数据并不实用,因为它们实际上是为静态数据设计的。这种不切实际的结果导致在几个系统中的聚类准确性很差。本文基于时间序列数据形状的相似性,提出了一种新的混合聚类算法。首先根据时间相似性将时间序列数据分组为子类。然后,根据形状相似性,使用k-Medoids算法合并子群集。该模型有两个贡献:(1)比其他传统方法和混合方法更准确;(2)它以低复杂度确定时间序列数据之间形状的相似性。为了评估所提出模型的准确性,使用句法和实际时间序列数据集对模型进行了广泛测试。

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