Clustering of functional data in a low-dimensional subspace
To find optimal clusters of functional objects in a lower-dimensional subspace of data, a sequential method called tandem analysis, is often used, though such a method is problematic. A new procedure is developed to find optimal clusters of functional objects and also find an optimal subspace for clustering, simultaneously. The method is based on the k-means criterion for functional data and seeks the subspace that is maximally informative about the clustering structure in the data. An efficient alternating least-squares algorithm is described, and the proposed method is extended to a regularized method. Analyses of artificial and real data examples demonstrate that the proposed method gives correct and interpretable results. Copyright Springer-Verlag 2012
Year of publication: |
2012
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Authors: | Yamamoto, Michio |
Published in: |
Advances in Data Analysis and Classification. - Springer. - Vol. 6.2012, 3, p. 219-247
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Publisher: |
Springer |
Subject: | Functional data | Clustering | Low-dimensional space | Dimension reduction | Smoothing |
Saved in:
Online Resource
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