In machine learning, it is common to interpret each data sample as a multivariate vector disregarding the correlations among covariates. However, the data may actually be functional, i.e., each data point is a function of some variable, such as time, and the function is discretely sampled. The naive treatment of functional data as traditional multivariate data can lead to poor performance due to the correlations. In this article, we focus on subspace clustering for functional data or curves and propose a new method robust to shift and rotation. The idea is to define a function or curve and all its versions generated by shift and rotation as an equivalent class and then to find the subspace structure among all equivalent classes as the surro...
We consider the issue of classification of functional data and, in particular, we deal with the prob...
We develop a new framework for clustering functional data, based on a distance matrix similar to the...
Functional data can be clustered by plugging estimated regression coefficients from individual curve...
Functional data, where samples are random func-tions, are increasingly common and important in a var...
[[abstract]]A correlation-based functional clustering method is proposed for grouping curves with si...
Subspace clustering refers to the task of finding a multi-subspace representation that best fits a c...
Functional data clustering procedures seek to identify subsets of curves with similar shapes and est...
[[abstract]]A novel multivariate k-centers functional clustering algorithm for the multivariate func...
[[abstract]]We propose a multivariate k-centers functional clustering algorithm for the multivariate...
[[abstract]]This study considers two clustering criteria to achieve difierent goals of grouping simi...
The aim of this article is to propose a procedure to cluster functional observations in a subspace ...
[[abstract]]This study considers two clustering criteria to achieve different goals of grouping simi...
[[abstract]]A covariate adjusted subspace projected functional data classification (SPFC) method is ...
The aim of this article is to propose a procedure to cluster functional observations in a subspace o...
We present a new framework for clustering functional data along with a new paradigm for performing m...
We consider the issue of classification of functional data and, in particular, we deal with the prob...
We develop a new framework for clustering functional data, based on a distance matrix similar to the...
Functional data can be clustered by plugging estimated regression coefficients from individual curve...
Functional data, where samples are random func-tions, are increasingly common and important in a var...
[[abstract]]A correlation-based functional clustering method is proposed for grouping curves with si...
Subspace clustering refers to the task of finding a multi-subspace representation that best fits a c...
Functional data clustering procedures seek to identify subsets of curves with similar shapes and est...
[[abstract]]A novel multivariate k-centers functional clustering algorithm for the multivariate func...
[[abstract]]We propose a multivariate k-centers functional clustering algorithm for the multivariate...
[[abstract]]This study considers two clustering criteria to achieve difierent goals of grouping simi...
The aim of this article is to propose a procedure to cluster functional observations in a subspace ...
[[abstract]]This study considers two clustering criteria to achieve different goals of grouping simi...
[[abstract]]A covariate adjusted subspace projected functional data classification (SPFC) method is ...
The aim of this article is to propose a procedure to cluster functional observations in a subspace o...
We present a new framework for clustering functional data along with a new paradigm for performing m...
We consider the issue of classification of functional data and, in particular, we deal with the prob...
We develop a new framework for clustering functional data, based on a distance matrix similar to the...
Functional data can be clustered by plugging estimated regression coefficients from individual curve...