Timely characterizations of risks in economic and financial systems play an essential role in both economic policy and private sector decisions. However, the informational content of low-frequency variables and the results from conditional mean models provide only limited evidence to investigate this problem. We propose a novel mixed-frequency quantile vector autoregression (MF-QVAR) model to address this issue. Inspired by the univariate Bayesian quantile regression literature, the multivariate asymmetric Laplace distribution is exploited under the Bayesian framework to form the likelihood. A data augmentation approach coupled with a precision sampler efficiently estimates the missing low-frequency variables at higher frequencies under the...
Mixed frequency Bayesian vector autoregressions (MF-BVARs) allow forecasters to incor- porate a larg...
This paper focuses on nowcasts of tail risk to GDP growth, with a potentially wide array of monthly ...
This paper proposes a Bayesian approach to quantile autoregressive (QAR) time series model estimatio...
Timely characterizations of risks in economic and financial systems play an essential role in both e...
This paper proposes to relate conditional quantiles of stationary macroeconomic time series to the d...
A rapidly growing body of research has examined tail risks in macroeconomic outcomes. Most of this ...
This thesis deals with the estimation and forecasting of factor-augmented quantile autoregressive mo...
Recently, Bayesian solutions to the quantile regression problem, via the likeli-hood of a Skewed-Lap...
The goal of this paper is to employ a relatively new methodological approach to extract quantile-bas...
We consider a Bayesian vector autoregressive (VAR) model allowing for an explicit priorspecication f...
This paper proposes Bayesian evaluation and Bayes factor methods for assessing dynamic forecasts of ...
This paper considers the location-scale quantile autoregression in which the location and scale para...
This thesis examines the use of quantile methods to better estimate the time-varying conditional ass...
Monitoring economic conditions in real-time or Nowcasting is among the most important tasks routinel...
We develop a novel quantile double autoregressive model for modelling financial time series. This is...
Mixed frequency Bayesian vector autoregressions (MF-BVARs) allow forecasters to incor- porate a larg...
This paper focuses on nowcasts of tail risk to GDP growth, with a potentially wide array of monthly ...
This paper proposes a Bayesian approach to quantile autoregressive (QAR) time series model estimatio...
Timely characterizations of risks in economic and financial systems play an essential role in both e...
This paper proposes to relate conditional quantiles of stationary macroeconomic time series to the d...
A rapidly growing body of research has examined tail risks in macroeconomic outcomes. Most of this ...
This thesis deals with the estimation and forecasting of factor-augmented quantile autoregressive mo...
Recently, Bayesian solutions to the quantile regression problem, via the likeli-hood of a Skewed-Lap...
The goal of this paper is to employ a relatively new methodological approach to extract quantile-bas...
We consider a Bayesian vector autoregressive (VAR) model allowing for an explicit priorspecication f...
This paper proposes Bayesian evaluation and Bayes factor methods for assessing dynamic forecasts of ...
This paper considers the location-scale quantile autoregression in which the location and scale para...
This thesis examines the use of quantile methods to better estimate the time-varying conditional ass...
Monitoring economic conditions in real-time or Nowcasting is among the most important tasks routinel...
We develop a novel quantile double autoregressive model for modelling financial time series. This is...
Mixed frequency Bayesian vector autoregressions (MF-BVARs) allow forecasters to incor- porate a larg...
This paper focuses on nowcasts of tail risk to GDP growth, with a potentially wide array of monthly ...
This paper proposes a Bayesian approach to quantile autoregressive (QAR) time series model estimatio...