This paper introduces the notion of common non-causal features and proposes tools to detect them in multivariate time series models. We argue that the existence of co-movements might not be detected using the conventional stationary vector autoregressive (var) model as the common dynamics are present in the non-causal (i.e. Forward-looking) component of the series. We show that the presence of a reduced rank structure allows to identify purely causal and non-causal var processes of order p>1 even in the gaussian likelihood framework. Hence, usual test statistics and canonical correlation analysis can be applied, where either lags or leads are used as instruments to determine whether the common features are present in either the backward- or...
Assessing the causal relationship among multivariate time series is a crucial problem in many fields...
For non-stationary vector autoregressive models (VAR hereafter, or VAR with moving average, VARMA he...
For non-stationary vector autoregressive models (VAR hereafter, or VAR with moving average, VARMA h...
This paper introduces the notion of common non-causal features and proposes tools to detect them in ...
This paper introduces the notion of common non-causal features and proposes tools to detect them in ...
This paper introduces the notion of common noncausal features and proposes tools for detecting the p...
The standard linear Granger non-causality test is effective only when time series are stationary. In...
Previous-30 treatments of multivariate non-causal time series have assumed stationarity. In this art...
A widely agreed upon definition of time series causality inference, established in the sem-inal 1969...
This chapter addresses the problem of identifying the causal structure between two time-series proce...
We propose methods for testing hypothesis of non-causality at various horizons, as defined in Dufour...
For non-stationary vector autoregressive models (var hereafter, or var with moving average, varma he...
For non-stationary vector autoregressive models (VAR hereafter, or VAR with moving average, VARMA he...
In this paper we propose Granger (non-)causality tests based on a VAR model allowing for time-varyin...
This paper proposes concepts and methods to investigate whether the bubble patterns observed in indi...
Assessing the causal relationship among multivariate time series is a crucial problem in many fields...
For non-stationary vector autoregressive models (VAR hereafter, or VAR with moving average, VARMA he...
For non-stationary vector autoregressive models (VAR hereafter, or VAR with moving average, VARMA h...
This paper introduces the notion of common non-causal features and proposes tools to detect them in ...
This paper introduces the notion of common non-causal features and proposes tools to detect them in ...
This paper introduces the notion of common noncausal features and proposes tools for detecting the p...
The standard linear Granger non-causality test is effective only when time series are stationary. In...
Previous-30 treatments of multivariate non-causal time series have assumed stationarity. In this art...
A widely agreed upon definition of time series causality inference, established in the sem-inal 1969...
This chapter addresses the problem of identifying the causal structure between two time-series proce...
We propose methods for testing hypothesis of non-causality at various horizons, as defined in Dufour...
For non-stationary vector autoregressive models (var hereafter, or var with moving average, varma he...
For non-stationary vector autoregressive models (VAR hereafter, or VAR with moving average, VARMA he...
In this paper we propose Granger (non-)causality tests based on a VAR model allowing for time-varyin...
This paper proposes concepts and methods to investigate whether the bubble patterns observed in indi...
Assessing the causal relationship among multivariate time series is a crucial problem in many fields...
For non-stationary vector autoregressive models (VAR hereafter, or VAR with moving average, VARMA he...
For non-stationary vector autoregressive models (VAR hereafter, or VAR with moving average, VARMA h...