The problem of estimating high-dimensional network models arises naturally in the analysis of many biological and socio-economic systems. In this work, we aim to learn a network structure from temporal panel data, employing the framework of Granger causal models under the assumptions of sparsity of its edges and inherent grouping structure among its nodes. To that end, we introduce a group lasso regression regularization framework, and also examine a thresholded variant to address the issue of group misspecification. Further, the norm consistency and variable selection consistency of the estimates are established, the latter under the novel concept of direction consistency. The performance of the proposed methodology is assessed through an ...
Causal feature selection and reconstructing interaction networks in observational multivariate time ...
We consider the task of estimating a Gaussian graphical model in the high-dimensional setting. The g...
Biological network diagrams provide a natural means to characterize the association between biologic...
The problem of estimating high-dimensional network models arises naturally in the anal-ysis of many ...
This paper proposes a novel methodology to detect Granger causality in mean in vector autoregressive...
<p>Gaussian graphical models represent the underlying graph structure of conditional dependence betw...
Due to the vast amount of economic and financial information to be stored and analyzed, the need for...
Granger causality, based on a vector autoregressive model, is one of the most popular methods for un...
Networks with a very large number of nodes appear in many application areas and pose challenges for ...
The thesis introduces structured machine learning regressions for high-dimensional time series data ...
This dissertation discusses several aspects of estimation and inference for high dimensional network...
Granger causality (GC) is a method for determining whether and how two time series exert causal infl...
International audienceThe recovery of the causality networks with a number of variables is an import...
We consider the problem of forecasting multiple time series across multiple cross-sections based sol...
Causal Bayesian networks are graphically represented by directed acyclic graphs (DAGs). Learning cau...
Causal feature selection and reconstructing interaction networks in observational multivariate time ...
We consider the task of estimating a Gaussian graphical model in the high-dimensional setting. The g...
Biological network diagrams provide a natural means to characterize the association between biologic...
The problem of estimating high-dimensional network models arises naturally in the anal-ysis of many ...
This paper proposes a novel methodology to detect Granger causality in mean in vector autoregressive...
<p>Gaussian graphical models represent the underlying graph structure of conditional dependence betw...
Due to the vast amount of economic and financial information to be stored and analyzed, the need for...
Granger causality, based on a vector autoregressive model, is one of the most popular methods for un...
Networks with a very large number of nodes appear in many application areas and pose challenges for ...
The thesis introduces structured machine learning regressions for high-dimensional time series data ...
This dissertation discusses several aspects of estimation and inference for high dimensional network...
Granger causality (GC) is a method for determining whether and how two time series exert causal infl...
International audienceThe recovery of the causality networks with a number of variables is an import...
We consider the problem of forecasting multiple time series across multiple cross-sections based sol...
Causal Bayesian networks are graphically represented by directed acyclic graphs (DAGs). Learning cau...
Causal feature selection and reconstructing interaction networks in observational multivariate time ...
We consider the task of estimating a Gaussian graphical model in the high-dimensional setting. The g...
Biological network diagrams provide a natural means to characterize the association between biologic...