International audienceAbstract Multivariate time-dependent data, where multiple features are observed over time for a set of individuals, are increasingly widespread in many application domains. To model these data, we need to account for relations among both time instants and variables and, at the same time, for subject heterogeneity. We propose a new co-clustering methodology for grouping individuals and variables simultaneously, designed to handle both functional and longitudinal data. Our approach borrows some concepts from the curve registration framework by embedding the shape invariant model in the latent block model , estimated via a suitable modification of the SEM-Gibbs algorithm. The resulting procedure allows for several user-de...
International audienceIn this paper, we propose a new Bayesian co-clustering approach applied to Mul...
In this paper we present a family of models and learning algorithms that can simultaneously align ...
Model-based clustering represents nowadays a popular tool of analysis thanks to its probabilistic fo...
International audienceAbstract Multivariate time-dependent data, where multiple features are observe...
International audienceHigh dimensional data clustering is an increasingly interesting topic in the s...
International audienceThe exponential growth of smart devices in all aspect of everyday life, leads ...
International audienceGiven repeated observations of several subjects over time, i.e. a longitudinal...
International audienceThree-way data can be seen as a collection of two-way matrices, as we can meet...
Model-based co-clustering can be seen as a particularly valuable extension of model-based clustering...
Longitudinal studies play a prominent role in health, social, and behavioral sciences as well as in ...
The clustering for functional data with misaligned problems has drawn much attention in the last dec...
Standard multi-subject time series models assume all individuals in a gathered sample to exhibit equ...
International audienceThe simultaneous clustering of observations and features ofdatasets (known as ...
International audienceIn this paper, we propose a new time-aware dissimilarity measure that takes in...
International audienceIn this paper, we propose a new Bayesian co-clustering approach applied to Mul...
In this paper we present a family of models and learning algorithms that can simultaneously align ...
Model-based clustering represents nowadays a popular tool of analysis thanks to its probabilistic fo...
International audienceAbstract Multivariate time-dependent data, where multiple features are observe...
International audienceHigh dimensional data clustering is an increasingly interesting topic in the s...
International audienceThe exponential growth of smart devices in all aspect of everyday life, leads ...
International audienceGiven repeated observations of several subjects over time, i.e. a longitudinal...
International audienceThree-way data can be seen as a collection of two-way matrices, as we can meet...
Model-based co-clustering can be seen as a particularly valuable extension of model-based clustering...
Longitudinal studies play a prominent role in health, social, and behavioral sciences as well as in ...
The clustering for functional data with misaligned problems has drawn much attention in the last dec...
Standard multi-subject time series models assume all individuals in a gathered sample to exhibit equ...
International audienceThe simultaneous clustering of observations and features ofdatasets (known as ...
International audienceIn this paper, we propose a new time-aware dissimilarity measure that takes in...
International audienceIn this paper, we propose a new Bayesian co-clustering approach applied to Mul...
In this paper we present a family of models and learning algorithms that can simultaneously align ...
Model-based clustering represents nowadays a popular tool of analysis thanks to its probabilistic fo...