近似原型的时间序列聚类

Ville Hautamäki, Pekka Nykänen, P. Fränti
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引用次数: 112

摘要

对时间序列数据进行聚类会产生传统的欧氏空间聚类所不存在的问题。具体来说,需要计算集群原型,通常的解决方案是使用集群介质。在这项工作中,我们将最优原型定义为一个优化问题,并提出了一个局部搜索解决方案。实验比较了不同的时间序列聚类方法,发现基于k-means算法的聚类方法具有最佳的聚类精度。
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Time-series clustering by approximate prototypes
Clustering time-series data poses problems, which do not exist in traditional clustering in Euclidean space. Specifically, cluster prototype needs to be calculated, where common solution is to use cluster medoid. In this work, we define an optimal prototype as an optimization problem and propose a local search solution to it. We experimentally compare different time-series clustering methods and find out that the proposed prototype with agglomerative clustering followed by k-means algorithm provides best clustering accuracy.
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