This thesis focuses on data that has complex spatio-temporal structure and on probabilistic graphical models that learn the structure in an interpretable and scalable manner. We target two research areas of interest: Gaussian graphical models for tensor-variate data and summarization of complex time-varying texts using topic models. This work advances the state-of-the-art in several directions. First, it introduces a new class of tensor-variate Gaussian graphical models via the Sylvester tensor equation. Second, it develops an optimization technique based on a fast-converging proximal alternating linearized minimization method, which scales tensor-variate Gaussian graphical model estimations to modern big-data settings. Third, it connects K...
The world is very complex, uncertain, and hard to understand. Our innate capacity for describing the...
This thesis mainly works on the parametric graphical modelling of multivariate time series. The idea...
International audienceState-space models (SSM) are central to describe time-varying complex systems ...
This thesis focuses on data that has complex spatio-temporal structure and on probabilistic graphica...
Probabilistic graphical models can be extended to time series by considering probabilistic dependenc...
Many important scientific and data-driven problems involve quantities that vary over space and time....
Graphical models have established themselves as fundamental tools through which to understand comple...
We propose a novel statistical model to describe spatio-temporal extreme events. The model can be us...
In this work, we are motivated by discriminating multivariate time-series with an underlying graph t...
Data observed simultaneously in both space and time are becoming increasingly prevalent with applica...
We introduce a scalable approach to Gaussian process inference that combines spatio-temporal filteri...
Discrete spatial structures are ubiquitous in statistical analysis. They can take the form of images...
Graphical models, which can be viewed as a marriage of graph theory and probability theory, provide ...
A novel model is proposed in this thesis to describe in a flexible manner the extreme events in both...
The increasing availability of temporal-spatial events produced from natural and social systems prov...
The world is very complex, uncertain, and hard to understand. Our innate capacity for describing the...
This thesis mainly works on the parametric graphical modelling of multivariate time series. The idea...
International audienceState-space models (SSM) are central to describe time-varying complex systems ...
This thesis focuses on data that has complex spatio-temporal structure and on probabilistic graphica...
Probabilistic graphical models can be extended to time series by considering probabilistic dependenc...
Many important scientific and data-driven problems involve quantities that vary over space and time....
Graphical models have established themselves as fundamental tools through which to understand comple...
We propose a novel statistical model to describe spatio-temporal extreme events. The model can be us...
In this work, we are motivated by discriminating multivariate time-series with an underlying graph t...
Data observed simultaneously in both space and time are becoming increasingly prevalent with applica...
We introduce a scalable approach to Gaussian process inference that combines spatio-temporal filteri...
Discrete spatial structures are ubiquitous in statistical analysis. They can take the form of images...
Graphical models, which can be viewed as a marriage of graph theory and probability theory, provide ...
A novel model is proposed in this thesis to describe in a flexible manner the extreme events in both...
The increasing availability of temporal-spatial events produced from natural and social systems prov...
The world is very complex, uncertain, and hard to understand. Our innate capacity for describing the...
This thesis mainly works on the parametric graphical modelling of multivariate time series. The idea...
International audienceState-space models (SSM) are central to describe time-varying complex systems ...