The clustering for functional data with misaligned problems has drawn much attention in the last decade. Most methods do the clustering after those functional data being registered and there has been little research using both functional and scalar variables. In this article, we propose a simultaneous registration and clustering model via two-level models, allowing the use of both types of variables and also allowing simultaneous registration and clustering. For the data collected from subjects in different groups, a Gaussian process functional regression model with time warping is used as the first level model; an allocation model depending on scalar variables is used as the second level model providing further information over the groups....
Functional data that are not perfectly aligned in the sense of not showing peaks and valleys at the ...
[[abstract]]A novel multivariate k-centers functional clustering algorithm for the multivariate func...
We consider the issue of classification of functional data and, in particular, we deal with the prob...
Functional data analysis aims to provide statistical inference for stochastic processes defined over...
International audienceHigh dimensional data clustering is an increasingly interesting topic in the s...
Classification is a very common task in information processing and important problem in many sectors...
In this article we propose a penalized clustering method for large-scale data with multiple covariat...
PhD ThesisFunctional data analysis (FDA) has many applications in almost every branch of science, s...
International audienceAbstract Multivariate time-dependent data, where multiple features are observe...
Abstract. It is common to perform clustering methods independently on dierent data sets while (i) al...
As an important exploratory analysis, curves of similar shape are often classified into groups, whic...
International audienceThis paper proposes the first model-based clustering algorithm for multivariat...
In this paper we propose two clustering strategies for spatially referenced functional data. Both a...
This paper presents a new model-based generalized functional clustering method for discrete longitud...
In order to find similar features between multidimensional curves, we consider the application of a...
Functional data that are not perfectly aligned in the sense of not showing peaks and valleys at the ...
[[abstract]]A novel multivariate k-centers functional clustering algorithm for the multivariate func...
We consider the issue of classification of functional data and, in particular, we deal with the prob...
Functional data analysis aims to provide statistical inference for stochastic processes defined over...
International audienceHigh dimensional data clustering is an increasingly interesting topic in the s...
Classification is a very common task in information processing and important problem in many sectors...
In this article we propose a penalized clustering method for large-scale data with multiple covariat...
PhD ThesisFunctional data analysis (FDA) has many applications in almost every branch of science, s...
International audienceAbstract Multivariate time-dependent data, where multiple features are observe...
Abstract. It is common to perform clustering methods independently on dierent data sets while (i) al...
As an important exploratory analysis, curves of similar shape are often classified into groups, whic...
International audienceThis paper proposes the first model-based clustering algorithm for multivariat...
In this paper we propose two clustering strategies for spatially referenced functional data. Both a...
This paper presents a new model-based generalized functional clustering method for discrete longitud...
In order to find similar features between multidimensional curves, we consider the application of a...
Functional data that are not perfectly aligned in the sense of not showing peaks and valleys at the ...
[[abstract]]A novel multivariate k-centers functional clustering algorithm for the multivariate func...
We consider the issue of classification of functional data and, in particular, we deal with the prob...