[[abstract]]A covariate adjusted subspace projected functional data classification (SPFC) method is proposed for curves or functional data classification with accommodating additional covariate information. Based on the framework of subspace projected functional data clustering, curves of each cluster are embedded in the cluster subspace spanned by a mean function and eigenfunctions of the covariance kernel. We assume that the mean function may depend on covariates, and curves of each cluster are represented by the covariate adjusted functional principal components analysis (FPCA) model or covariate adjusted Karhunen-Loève expansion. Under the assumption that all the groups have different mean functions and eigenspaces, an observed curve is...
International audienceThis paper proposes the first model-based clustering algorithm for multivariat...
A functional clustering (FC) method, "k"-centres FC, for longitudinal data is proposed. The "k"-cent...
The aim of this article is to propose a procedure to cluster functional observations in a subspace o...
[[abstract]]A correlation-based functional clustering method is proposed for grouping curves with si...
[[abstract]]We propose a multivariate k-centers functional clustering algorithm for the multivariate...
[[abstract]]A novel multivariate k-centers functional clustering algorithm for the multivariate func...
[[abstract]]This study considers two clustering criteria to achieve difierent goals of grouping simi...
[[abstract]]This study considers two clustering criteria to achieve different goals of grouping simi...
In machine learning, it is common to interpret each data sample as a multivariate vector disregardin...
In this paper we propose a novel clustering method for functional data based on the principal curve ...
A new procedure for simultaneously finding the optimal cluster structure of multivariate functional ...
Classical multivariate principal component analysis has been extended to functional data an...
Functional data, where samples are random func-tions, are increasingly common and important in a var...
With the emergence of numerical sensors in many aspects of everyday life, there is an increasing nee...
With the advance of modern technology, more and more data are being recorded continuously during a t...
International audienceThis paper proposes the first model-based clustering algorithm for multivariat...
A functional clustering (FC) method, "k"-centres FC, for longitudinal data is proposed. The "k"-cent...
The aim of this article is to propose a procedure to cluster functional observations in a subspace o...
[[abstract]]A correlation-based functional clustering method is proposed for grouping curves with si...
[[abstract]]We propose a multivariate k-centers functional clustering algorithm for the multivariate...
[[abstract]]A novel multivariate k-centers functional clustering algorithm for the multivariate func...
[[abstract]]This study considers two clustering criteria to achieve difierent goals of grouping simi...
[[abstract]]This study considers two clustering criteria to achieve different goals of grouping simi...
In machine learning, it is common to interpret each data sample as a multivariate vector disregardin...
In this paper we propose a novel clustering method for functional data based on the principal curve ...
A new procedure for simultaneously finding the optimal cluster structure of multivariate functional ...
Classical multivariate principal component analysis has been extended to functional data an...
Functional data, where samples are random func-tions, are increasingly common and important in a var...
With the emergence of numerical sensors in many aspects of everyday life, there is an increasing nee...
With the advance of modern technology, more and more data are being recorded continuously during a t...
International audienceThis paper proposes the first model-based clustering algorithm for multivariat...
A functional clustering (FC) method, "k"-centres FC, for longitudinal data is proposed. The "k"-cent...
The aim of this article is to propose a procedure to cluster functional observations in a subspace o...