In this paper we derive a general parametric bootstrapping approach to compute density forecasts for various types of mixed-data sampling (MIDAS) regressions. We consider both classical and unrestricted MIDAS regressions with and without an autoregressive component. First, we compare the forecasting performance of the different MIDAS models in Monte Carlo simulation experiments. We find that the results in terms of point and density forecasts are coherent. Moreover, the results do not clearly indicate a superior performance of one of the models under scrutiny when the persistence of the low frequency variable is low. Some differences are instead more evident when the persistence is high, for which the ARMIDAS and the AR-U-MIDAS produce bett...
Most macroeconomic activity series such as Swedish GDP growth are collected quarterly while an impor...
We forecast US GDP sampled quarterly over horizons ranging from one quarter to three years. Using AR...
This paper proposes a mixed-frequency error-correction model in order to develop a regression approa...
In this paper we derive a general parametric bootstrapping approach to compute density forecasts for...
In this paper we derive a general parametric bootstrapping approach to compute density forecasts for...
In this paper we derive a general parametric bootstrapping approach to compute density forecasts fo...
This paper makes two contribution to the literature on density forecasts. First, we propose a novel ...
Many macroeconomic series, such as U.S. real output growth, are sampled quarterly, although potentia...
Many macroeconomic series, such as U.S. real output growth, are sampled quarterly, although potentia...
Many macroeconomic series, such as U.S. real output growth, are sampled quarterly, although potentia...
Many macroeconomic series, such as U.S. real output growth, are sampled quarterly, although potentia...
Many macroeconomic series, such as U.S. real output growth, are sampled quarterly, although potentia...
Although many macroeconomic series such as US real output growth are sampled quarterly, many potenti...
Although many macroeconomic series such as US real output growth are sampled quarterly, many potenti...
We combine the issues of dealing with variables sampled at mixed frequencies and the use of real-tim...
Most macroeconomic activity series such as Swedish GDP growth are collected quarterly while an impor...
We forecast US GDP sampled quarterly over horizons ranging from one quarter to three years. Using AR...
This paper proposes a mixed-frequency error-correction model in order to develop a regression approa...
In this paper we derive a general parametric bootstrapping approach to compute density forecasts for...
In this paper we derive a general parametric bootstrapping approach to compute density forecasts for...
In this paper we derive a general parametric bootstrapping approach to compute density forecasts fo...
This paper makes two contribution to the literature on density forecasts. First, we propose a novel ...
Many macroeconomic series, such as U.S. real output growth, are sampled quarterly, although potentia...
Many macroeconomic series, such as U.S. real output growth, are sampled quarterly, although potentia...
Many macroeconomic series, such as U.S. real output growth, are sampled quarterly, although potentia...
Many macroeconomic series, such as U.S. real output growth, are sampled quarterly, although potentia...
Many macroeconomic series, such as U.S. real output growth, are sampled quarterly, although potentia...
Although many macroeconomic series such as US real output growth are sampled quarterly, many potenti...
Although many macroeconomic series such as US real output growth are sampled quarterly, many potenti...
We combine the issues of dealing with variables sampled at mixed frequencies and the use of real-tim...
Most macroeconomic activity series such as Swedish GDP growth are collected quarterly while an impor...
We forecast US GDP sampled quarterly over horizons ranging from one quarter to three years. Using AR...
This paper proposes a mixed-frequency error-correction model in order to develop a regression approa...