This paper aims to provide a better understanding of the causal structure in a multivariate time series by introducing several statistical procedures for testing indirect and spurious causal effects. In practice, detecting these effects is a complicated task, since the auxiliary variables that transmit/induce indirect/spurious causality are very often unknown. The availability of hundreds of economic variables makes this task even more difficult since it is generally infeasible to find the appropriate auxiliary variables among all the available ones. In addition, including hundreds of variables and their lags in a regression equation is technically difficult. The paper proposes several statistical procedures to test for the presence of indi...
We propose methods for testing hypothesis of non-causality at various horizons, as defined in Dufour...
Abstract Granger causality (GC) has been widely ap-plied in economics and neuroscience to reveal cau...
This paper proposes a novel methodology to detect Granger causality on average in vector autoregress...
In this paper we develop an LM test for Granger causality in high-dimensional VAR models based on pe...
Granger causality as a popular concept in time series analysis is widely applied in empirical resear...
Methods used to infer causal relations from data rather than knowledge of mechanisms are most helpfu...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
This paper extends multivariate Granger causality to take into account the subspaces along which Gra...
The methodology of multivariate Granger non-causality testing at various horizons is extended to all...
Identifying risk spillovers in financial markets is of great importance for assessing systemic risk ...
This article investigates the causality structure of financial time series. We concentrate on three ...
This article introduces a kernel-based nonparametric inferential procedure to test for Granger causa...
We propose model-free measures for Granger causality in mean between random variables. Unlike the ex...
The concept of causality formulated in 1969 by C.W.J. Granger is mostly popular in the econometric l...
Abstract: This article investigates causality structure of financial time series. We concentrate on ...
We propose methods for testing hypothesis of non-causality at various horizons, as defined in Dufour...
Abstract Granger causality (GC) has been widely ap-plied in economics and neuroscience to reveal cau...
This paper proposes a novel methodology to detect Granger causality on average in vector autoregress...
In this paper we develop an LM test for Granger causality in high-dimensional VAR models based on pe...
Granger causality as a popular concept in time series analysis is widely applied in empirical resear...
Methods used to infer causal relations from data rather than knowledge of mechanisms are most helpfu...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
This paper extends multivariate Granger causality to take into account the subspaces along which Gra...
The methodology of multivariate Granger non-causality testing at various horizons is extended to all...
Identifying risk spillovers in financial markets is of great importance for assessing systemic risk ...
This article investigates the causality structure of financial time series. We concentrate on three ...
This article introduces a kernel-based nonparametric inferential procedure to test for Granger causa...
We propose model-free measures for Granger causality in mean between random variables. Unlike the ex...
The concept of causality formulated in 1969 by C.W.J. Granger is mostly popular in the econometric l...
Abstract: This article investigates causality structure of financial time series. We concentrate on ...
We propose methods for testing hypothesis of non-causality at various horizons, as defined in Dufour...
Abstract Granger causality (GC) has been widely ap-plied in economics and neuroscience to reveal cau...
This paper proposes a novel methodology to detect Granger causality on average in vector autoregress...