In canonical vector time series autoregressions, which permit dependence only on past values, the errors generally show contemporaneous correlation. By contrast structural vector autoregressions allow contemporaneous series dependence and assume errors with no contemporaneous correlation. Such models having a recursive structure can be described by a directed acyclic graph. We show, with the use of a real example, how the identification of these models may be assisted by examination of the conditional independence graph of contemporaneous and lagged variables. In this example we identify the causal dependence of monthly Italian bank loan interest rates on government bond and repurchase agreement rates. When the number of series is larger, t...
Vector or multivariate autoregression is a statistical model for random processes. It is relatively ...
Article first published online: 7 AUG 2015This paper provides a general procedure to estimate struct...
Consider a Gaussian stationary stochastic vector process with the property that designated pairs of ...
Structural vector autoregressions allow contemporaneous series dependence and assume errors with no ...
Structural Vector Autoregressions allow dependence among contemporaneous vari-ables. If such models ...
RePEc Working Papers Series: No: 19/2008In this paper graphical modelling is used to select a sparse...
In this paper graphical modelling is used to select a sparse structure for a multivariate time serie...
An objective Bayes approach based on graphical modeling is proposed to learn the contemporaneous dep...
This paper proposes a Bayesian, graph-based approach to identification in vector autoregressive (VAR...
This paper proposes a Bayesian, graph-based approach to identification in vector autoregressive (VAR...
Analysis of causal effects between continuous-valued variables typically uses either autoregressive ...
Linear recursive systems (LRS) describe linear relationships among continuous random variables (typi...
In this paper, we use directed acyclic graphs (DAGs) with temporal structure to describe models of n...
Title: Study of the dependence structure in economic and financial data Author: Radana Hlavandová De...
open2noBoth authors gratefully acknowledge partial financial support from the Italian MIUR Grant PRI...
Vector or multivariate autoregression is a statistical model for random processes. It is relatively ...
Article first published online: 7 AUG 2015This paper provides a general procedure to estimate struct...
Consider a Gaussian stationary stochastic vector process with the property that designated pairs of ...
Structural vector autoregressions allow contemporaneous series dependence and assume errors with no ...
Structural Vector Autoregressions allow dependence among contemporaneous vari-ables. If such models ...
RePEc Working Papers Series: No: 19/2008In this paper graphical modelling is used to select a sparse...
In this paper graphical modelling is used to select a sparse structure for a multivariate time serie...
An objective Bayes approach based on graphical modeling is proposed to learn the contemporaneous dep...
This paper proposes a Bayesian, graph-based approach to identification in vector autoregressive (VAR...
This paper proposes a Bayesian, graph-based approach to identification in vector autoregressive (VAR...
Analysis of causal effects between continuous-valued variables typically uses either autoregressive ...
Linear recursive systems (LRS) describe linear relationships among continuous random variables (typi...
In this paper, we use directed acyclic graphs (DAGs) with temporal structure to describe models of n...
Title: Study of the dependence structure in economic and financial data Author: Radana Hlavandová De...
open2noBoth authors gratefully acknowledge partial financial support from the Italian MIUR Grant PRI...
Vector or multivariate autoregression is a statistical model for random processes. It is relatively ...
Article first published online: 7 AUG 2015This paper provides a general procedure to estimate struct...
Consider a Gaussian stationary stochastic vector process with the property that designated pairs of ...