TL;DR
This paper introduces a novel time series clustering method using community detection in networks, transforming time series into a network structure to improve clustering accuracy and pattern recognition.
Contribution
The paper presents a new network-based approach for time series clustering that outperforms traditional methods and effectively detects shape patterns and variations.
Findings
Outperforms classic clustering algorithms like k-medoids and diana.
Effectively detects shape patterns in time series.
Robust to time shifts and amplitude variations.
Abstract
In this paper, we propose a technique for time series clustering using community detection in complex networks. Firstly, we present a method to transform a set of time series into a network using different distance functions, where each time series is represented by a vertex and the most similar ones are connected. Then, we apply community detection algorithms to identify groups of strongly connected vertices (called a community) and, consequently, identify time series clusters. Still in this paper, we make a comprehensive analysis on the influence of various combinations of time series distance functions, network generation methods and community detection techniques on clustering results. Experimental study shows that the proposed network-based approach achieves better results than various classic or up-to-date clustering techniques under consideration. Statistical tests confirm that…
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