In the framework of functional data analysis we propose two Bayesian Nonparametric models. In the first model, motivated by an application in neuroimaging, functions are assumed to be spatially correlated and clustered together by an underlying Functional Dependent Dirichlet process which encodes a conditional autoregressive dependence structure to guide the spatial selection. Spatial symmetries of the functional responses in the brain can be appropriately accounted for in our framework. Motivated by the Italian natural gas balancing platform, in the second model time dependence are induced in the weights of the underlying Functional Dependent Dirichlet process through a dynamic linear model defined over a partitioned function space. Typica...
This paper aims to review state-of-the-art Bayesian-inference-based methods applied to functional ma...
International audienceMotivated by the problem of forecasting demand and offer curves, we introduce ...
Motivated by the problem of forecasting demand and offer curves, we introduce a class of nonparametr...
The definition of vectors of dependent random probability measures is a topic of interest in Bayesi...
This thesis provides novel methodologies for functional Principal Component Analysis of dependent t...
We present a Bayesian approach for modeling multivariate, dependent functional data. To account for ...
We introduce new Bayesian methodology for modeling functional and time series data. While broadly ap...
Functional data showing spatial dependence structure occur in many applied fields. For example, in m...
In this research work, I propose Bayesian nonparametric approaches to model functional magnetic reso...
The extraordinary advancements in neuroscientific technology for brain recordings over the last deca...
Multi-dimensional functional data arises in numerous modern scientific experimental and observationa...
In this paper we present a novel wavelet-based Bayesian nonparametric regression model for the analy...
Considering the context of functional data analysis, we developed and applied a new Bayesian approac...
Considering the context of functional data analysis, we developed and applied a new Bayesian approac...
We develop a method for unsupervised analysis of functional brain images that learns group-level pat...
This paper aims to review state-of-the-art Bayesian-inference-based methods applied to functional ma...
International audienceMotivated by the problem of forecasting demand and offer curves, we introduce ...
Motivated by the problem of forecasting demand and offer curves, we introduce a class of nonparametr...
The definition of vectors of dependent random probability measures is a topic of interest in Bayesi...
This thesis provides novel methodologies for functional Principal Component Analysis of dependent t...
We present a Bayesian approach for modeling multivariate, dependent functional data. To account for ...
We introduce new Bayesian methodology for modeling functional and time series data. While broadly ap...
Functional data showing spatial dependence structure occur in many applied fields. For example, in m...
In this research work, I propose Bayesian nonparametric approaches to model functional magnetic reso...
The extraordinary advancements in neuroscientific technology for brain recordings over the last deca...
Multi-dimensional functional data arises in numerous modern scientific experimental and observationa...
In this paper we present a novel wavelet-based Bayesian nonparametric regression model for the analy...
Considering the context of functional data analysis, we developed and applied a new Bayesian approac...
Considering the context of functional data analysis, we developed and applied a new Bayesian approac...
We develop a method for unsupervised analysis of functional brain images that learns group-level pat...
This paper aims to review state-of-the-art Bayesian-inference-based methods applied to functional ma...
International audienceMotivated by the problem of forecasting demand and offer curves, we introduce ...
Motivated by the problem of forecasting demand and offer curves, we introduce a class of nonparametr...