The presence of permanent volatility shifts in key macroeconomic and financial variables in developed economies appears to be relatively common. Conventional unit root tests are unreliable in the presence of such behavior, having nonpivotal asymptotic null distributions. In this paper we propose a bootstrap approach to unit root testing that is valid in the presence of a wide class of permanent variance changes that includes single and multiple (abrupt and smooth transition) volatility change processes as special cases. We make use of the so-called wild bootstrap principle, which preserves the heteroskedasticity present in the original shocks. Our proposed method does not require the practitioner to specify any parametric model for the vol...
This paper generalises Boswijk and Zu (2018)'s adaptive unit root test for time series with nonstati...
In this paper we investigate to what extent the bootstrap can be applied to conditional mean models,...
<p>We investigate the behavior of the well-known Hylleberg, Engle, Granger and Yoo (HEGY) regression...
The presence of permanent volatility shifts in key macroeconomic and financial variables in develope...
none2The presence of permanent volatility shifts in key macroeconomic and financial variables in dev...
Many of the key macro-economic and financial variables in developed economies are characterize...
Many of the key macro-economic and financial variables in developed economies are characterize...
Many of the key macro-economic and financial variables in developed economies are characterize...
Conventional unit root tests are known to be unreliable in the presence of permanent volatility shif...
none2Conventional unit root tests are known to be unreliable in the presence of permanent volatility...
We provide a joint treatment of three major issues that surround testing for a unit root in practice...
Conventional unit root tests are known to be unreliable in the presence of permanent volatility shif...
Three important issues surround testing for a unit root in practice: uncertainty as to whether or no...
Three important issues surround testing for a unit root in practice: uncertainty as to whether or no...
Three important issues surround testing for a unit root in practice: uncertainty as to whether or no...
This paper generalises Boswijk and Zu (2018)'s adaptive unit root test for time series with nonstati...
In this paper we investigate to what extent the bootstrap can be applied to conditional mean models,...
<p>We investigate the behavior of the well-known Hylleberg, Engle, Granger and Yoo (HEGY) regression...
The presence of permanent volatility shifts in key macroeconomic and financial variables in develope...
none2The presence of permanent volatility shifts in key macroeconomic and financial variables in dev...
Many of the key macro-economic and financial variables in developed economies are characterize...
Many of the key macro-economic and financial variables in developed economies are characterize...
Many of the key macro-economic and financial variables in developed economies are characterize...
Conventional unit root tests are known to be unreliable in the presence of permanent volatility shif...
none2Conventional unit root tests are known to be unreliable in the presence of permanent volatility...
We provide a joint treatment of three major issues that surround testing for a unit root in practice...
Conventional unit root tests are known to be unreliable in the presence of permanent volatility shif...
Three important issues surround testing for a unit root in practice: uncertainty as to whether or no...
Three important issues surround testing for a unit root in practice: uncertainty as to whether or no...
Three important issues surround testing for a unit root in practice: uncertainty as to whether or no...
This paper generalises Boswijk and Zu (2018)'s adaptive unit root test for time series with nonstati...
In this paper we investigate to what extent the bootstrap can be applied to conditional mean models,...
<p>We investigate the behavior of the well-known Hylleberg, Engle, Granger and Yoo (HEGY) regression...