We model a large panel of time series as a vector autoregression where the autoregressive matrices and the inverse covariance matrix of the system innovations are assumed to be sparse. The system has a network representation in terms of a directed graph representing predictive Granger relations and an undirected graph representing contemporaneous partial correlations. A LASSO algorithm called NETS is introduced to estimate the model. We apply the methodology to analyze a panel of volatility measures of 90 blue chips. The model captures an important fraction of total variability, on top of what is explained by volatility factors, and improves out-of-sample forecasting
In economic and financial applications, there is often the need for analysing multivariate time seri...
Networks with a very large number of nodes appear in many application areas and pose challenges for ...
In many fields, network analysis is used to investigate complex relationships. The increased availab...
We model a large panel of time series as a vector autoregression where the autoregressive matrices a...
none2siWe model a large panel of time series as a vector autoregression where the autoregressive mat...
We model a large panel of time series as a var where the autoregressive matrices and the inverse cov...
We model a large panel of time series as a var where the autoregressive matrices and the inverse cov...
We model a large panel of time series as a var where the autoregressive matrices and the inverse cov...
We model a large panel of time series as a var where the autoregressive matrices and the inverse cov...
We model a large panel of time series as a var where the autoregressive matrices and the inverse cov...
We model a large panel of time series as a var where the autoregressive matrices and the inverse cov...
This work proposes novel network analysis techniques for multivariate time series. We define the net...
This work proposes novel network analysis techniques for multivariate time se-ries. We define the ne...
This work proposes novel network analysis techniques for multivariate time se-ries. We define the ne...
This work proposes novel network analysis techniques for multivariate time se-ries. We dene the netw...
In economic and financial applications, there is often the need for analysing multivariate time seri...
Networks with a very large number of nodes appear in many application areas and pose challenges for ...
In many fields, network analysis is used to investigate complex relationships. The increased availab...
We model a large panel of time series as a vector autoregression where the autoregressive matrices a...
none2siWe model a large panel of time series as a vector autoregression where the autoregressive mat...
We model a large panel of time series as a var where the autoregressive matrices and the inverse cov...
We model a large panel of time series as a var where the autoregressive matrices and the inverse cov...
We model a large panel of time series as a var where the autoregressive matrices and the inverse cov...
We model a large panel of time series as a var where the autoregressive matrices and the inverse cov...
We model a large panel of time series as a var where the autoregressive matrices and the inverse cov...
We model a large panel of time series as a var where the autoregressive matrices and the inverse cov...
This work proposes novel network analysis techniques for multivariate time series. We define the net...
This work proposes novel network analysis techniques for multivariate time se-ries. We define the ne...
This work proposes novel network analysis techniques for multivariate time se-ries. We define the ne...
This work proposes novel network analysis techniques for multivariate time se-ries. We dene the netw...
In economic and financial applications, there is often the need for analysing multivariate time seri...
Networks with a very large number of nodes appear in many application areas and pose challenges for ...
In many fields, network analysis is used to investigate complex relationships. The increased availab...