Journal Article10.1007/S00357-003-0007-3
Clustering Functional Data
274
TL;DR: The problem of clustering functional data is addressed and results on principal points (cluster means for probability distributions) are given for functional Gaussian distributions.
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Abstract: The problem of clustering functional data is addressed. Results on principal points (cluster means for probability distributions) are given for functional Gaussian distributions. Examples and simulations are provided to illustrate results.
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Citations
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Kml and kml3d: R packages to cluster longitudinal data
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KmL: k-means for longitudinal data
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