Many studies measure the same type of information longitudinally on the same subject at multiple time points, and clustering of such functional data has many important applications. We propose a novel and easy method to implement dissimilarity measure for functional data clustering based on smoothing splines and smoothing parameter commutation. This method handles data observed at regular or irregular time points in the same way. We measure the dissimilarity between subjects based on varying curve estimates with pairwise commutation of smoothing parameters. The intuition is that smoothing parameters of smoothing splines reflect the inverse of the signal-to-noise ratios and that when applying an identical smoothing parameter the smoothed cur...
Clustering is an essential task in functional data analysis. In this study, we propose a framework f...
We consider selected topics in estimation and testing of functional data. In many applications of fu...
With this article, we define, investigate and exploit an efficient measure of the dissimilarity betw...
Many studies measure the same type of information longitudinally on the same subject at multiple tim...
Functional data clustering procedures seek to identify subsets of curves with similar shapes and est...
Functional data can be clustered by plugging estimated regression coefficients from individual curve...
Classification is a very common task in information processing and important problem in many sectors...
Functional data that are not perfectly aligned in the sense of not showing peaks and valleys at the ...
Abstract: Clustering algorithms have been actively used to identify similar time series, providing a...
Clustering methods utilizing support estimates of a data distribution have recently attracted much a...
The problem of detecting clusters is a common issue in the analysis of functional data and some int...
ABSTRACT. Data in many different fields come to practitioners through a process naturally described ...
Clustering is the process of grouping a set ofphysical or abstract objects into classes of similarob...
International audienceWe propose a method for high-dimensional curve clustering in the presence of i...
The aim of this article is to propose a procedure to cluster functional observations in a subspace o...
Clustering is an essential task in functional data analysis. In this study, we propose a framework f...
We consider selected topics in estimation and testing of functional data. In many applications of fu...
With this article, we define, investigate and exploit an efficient measure of the dissimilarity betw...
Many studies measure the same type of information longitudinally on the same subject at multiple tim...
Functional data clustering procedures seek to identify subsets of curves with similar shapes and est...
Functional data can be clustered by plugging estimated regression coefficients from individual curve...
Classification is a very common task in information processing and important problem in many sectors...
Functional data that are not perfectly aligned in the sense of not showing peaks and valleys at the ...
Abstract: Clustering algorithms have been actively used to identify similar time series, providing a...
Clustering methods utilizing support estimates of a data distribution have recently attracted much a...
The problem of detecting clusters is a common issue in the analysis of functional data and some int...
ABSTRACT. Data in many different fields come to practitioners through a process naturally described ...
Clustering is the process of grouping a set ofphysical or abstract objects into classes of similarob...
International audienceWe propose a method for high-dimensional curve clustering in the presence of i...
The aim of this article is to propose a procedure to cluster functional observations in a subspace o...
Clustering is an essential task in functional data analysis. In this study, we propose a framework f...
We consider selected topics in estimation and testing of functional data. In many applications of fu...
With this article, we define, investigate and exploit an efficient measure of the dissimilarity betw...