Exploratory Analysis of Functional Data via Clustering and Optimal Segmentation
Rossi, Fabrice; Lechevallier, Yves; Hugueney, Bernard; Hébrail, Georges (2010), Exploratory Analysis of Functional Data via Clustering and Optimal Segmentation, Neurocomputing, 73, 7-9, p. 1125-1141. http://dx.doi.org/10.1016/j.neucom.2009.11.022
Type
Article accepté pour publication ou publiéExternal document link
http://fr.arxiv.org/abs/1004.0456Date
2010Journal name
NeurocomputingVolume
73Number
7-9Publisher
Elsevier
Pages
1125-1141
Publication identifier
Metadata
Show full item recordAbstract (EN)
We propose in this paper an exploratory analysis algorithm for functional data. The method partitions a set of functions into $K$ clusters and represents each cluster by a simple prototype (e.g., piecewise constant). The total number of segments in the prototypes, $P$, is chosen by the user and optimally distributed among the clusters via two dynamic programming algorithms. The practical relevance of the method is shown on two real world datasets.Subjects / Keywords
Dynamic programming; Segmentation; Clustering; Exploratory analysis; Multiple time series; Functional DataRelated items
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