Conference Proceedings

Fuzzy c-Shape: A new algorithm for clustering finite time series waveforms

F Fahiman, JC Bezdek, SM Erfani, M Palaniswami, C Leckie

IEEE International Conference on Fuzzy Systems | IEEE | Published : 2017

Abstract

The existence of large volumes of time series data in many applications has motivated data miners to investigate specialized methods for mining time series data. Clustering is a popular data mining method due to its powerful exploratory nature and its usefulness as a preprocessing step for other data mining techniques. This article develops two novel clustering algorithms for time series data that are extensions of a crisp c-shapes algorithm. The two new algorithms are heuristic derivatives of fuzzy c-means (FCM). Fuzzy c-Shapes plus (FCS+) replaces the inner product norm in the FCM model with a shape-based distance function. Fuzzy c-Shapes double plus (FCS++) uses the shape-based distance, ..

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