We show that the effects of overfitting and underfitting a vector autoregressive (VAR) model are strongly asymmetric for VAR summary statistics involving higher-order dynamics (such as impulse response functions, variance decompositions, or long-run forecasts) . Underfit models often underestimate the true dynamics of the population process and may result in spuriously tight confidence intervals. These insights are important for applied work, regardless of how the lag order is determined. In addition, they provide a new perspective on the trade-offs between alternative lag order selection criteria. We provide evidence that, contrary to conventional wisdom, for many statistics of interest to VAR users the point and interval estimates base...
An important aspect of empirical research based on the vector autoregressive (VAR) model is the choi...
Vector autoregression (VAR) models have become widely used in applied economic research since Sims (...
Vector autoregressive models are often used to model multiple time series at once. They are applied ...
Impulse responses can be estimated to analyze the effects of a shock to a variable over time. Typica...
The statistical reliability of estimated VAR impulse responses is an important concern in applied wo...
It is common to conduct bootstrap inference in vector autoregressive (VAR) models based on the assum...
Li Y, Bauer D. Modeling I(2) Processes Using Vector Autoregressions Where the Lag Length Increases w...
International audienceThis paper investigates the lag length selection problem of a vector error cor...
Impulse response and forecast error variance matrix asymptotics are developed for VAR models with so...
This paper proposes a model selection approach for the specification of the cointegrating rank in th...
Bauer D. Information-Criterion-Based Lag Length Selection in Vector Autoregressive Approximations fo...
We study the impact of the system dimension on commonly used model selection criteria (AIC, BIC, HQ)...
This note discusses a pitfall of using the generalized impulse response function (GIRF) in vector au...
Vector autoregressive (VAR) models are frequently used for forecasting and impulse response analysis...
We show that the standard procedure for estimating long-run identified vector autoregressions uses a...
An important aspect of empirical research based on the vector autoregressive (VAR) model is the choi...
Vector autoregression (VAR) models have become widely used in applied economic research since Sims (...
Vector autoregressive models are often used to model multiple time series at once. They are applied ...
Impulse responses can be estimated to analyze the effects of a shock to a variable over time. Typica...
The statistical reliability of estimated VAR impulse responses is an important concern in applied wo...
It is common to conduct bootstrap inference in vector autoregressive (VAR) models based on the assum...
Li Y, Bauer D. Modeling I(2) Processes Using Vector Autoregressions Where the Lag Length Increases w...
International audienceThis paper investigates the lag length selection problem of a vector error cor...
Impulse response and forecast error variance matrix asymptotics are developed for VAR models with so...
This paper proposes a model selection approach for the specification of the cointegrating rank in th...
Bauer D. Information-Criterion-Based Lag Length Selection in Vector Autoregressive Approximations fo...
We study the impact of the system dimension on commonly used model selection criteria (AIC, BIC, HQ)...
This note discusses a pitfall of using the generalized impulse response function (GIRF) in vector au...
Vector autoregressive (VAR) models are frequently used for forecasting and impulse response analysis...
We show that the standard procedure for estimating long-run identified vector autoregressions uses a...
An important aspect of empirical research based on the vector autoregressive (VAR) model is the choi...
Vector autoregression (VAR) models have become widely used in applied economic research since Sims (...
Vector autoregressive models are often used to model multiple time series at once. They are applied ...