A novel proposal for combining forecast distributions is to use quantile regression to combine quantile estimates. We consider the usefulness of the resultant linear combining weights. If the quantile estimates are unbiased, then there is strong intuitive appeal for omitting the constant and constraining the weights to sum to unity in the quantile regression. However, we show that suppressing the constant renders one of the main attractive features of quantile regression invalid. We establish necessary and sufficient conditions for unbiasedness of a quantile estimate, and show that a combination with zero constant and weights that sum to unity is not necessarily unbiased
Quantile regression methods have been used widely in finance to alleviate estimationproblems related...
This paper provides the first thorough investigation of the negative weights that can emerge when co...
Abstract. Quantile regression, as introduced by Koenker and Bassett (1978), may be viewed as an exte...
Model selection for quantile regression is often a challenging problem. In addition to the well-know...
Whether it is possible to improve point, quantile and density forecasts via quantile forecast combin...
Quantile regression, as introduced by Koenker and Bassett (1978), may be viewed as an extension of c...
Quantile regression has become a powerful complement to the usual mean regression. A simple approach...
Despite a considerable literature on the combination of forecasts, there is little guidance regardin...
In regression, the desired estimate of y|x is not always given by a conditional mean, although this ...
Despite a considerable literature on the combination of forecasts, there is little guidance regardin...
Most of the literature on combination of forecasts deals with the assumption of unbiased individual ...
Abstract: Recent interest in modern regressionmodelling has focused on extending available (mean) re...
Abstract: Recent interest in modern regressionmodelling has focused on extending available (mean) re...
Quantile regression provides a method for estimating quantiles of a distribution while incorporating...
Koenker & Basset, 1978 introduce the quantile regression estimator, that allows to have a more compl...
Quantile regression methods have been used widely in finance to alleviate estimationproblems related...
This paper provides the first thorough investigation of the negative weights that can emerge when co...
Abstract. Quantile regression, as introduced by Koenker and Bassett (1978), may be viewed as an exte...
Model selection for quantile regression is often a challenging problem. In addition to the well-know...
Whether it is possible to improve point, quantile and density forecasts via quantile forecast combin...
Quantile regression, as introduced by Koenker and Bassett (1978), may be viewed as an extension of c...
Quantile regression has become a powerful complement to the usual mean regression. A simple approach...
Despite a considerable literature on the combination of forecasts, there is little guidance regardin...
In regression, the desired estimate of y|x is not always given by a conditional mean, although this ...
Despite a considerable literature on the combination of forecasts, there is little guidance regardin...
Most of the literature on combination of forecasts deals with the assumption of unbiased individual ...
Abstract: Recent interest in modern regressionmodelling has focused on extending available (mean) re...
Abstract: Recent interest in modern regressionmodelling has focused on extending available (mean) re...
Quantile regression provides a method for estimating quantiles of a distribution while incorporating...
Koenker & Basset, 1978 introduce the quantile regression estimator, that allows to have a more compl...
Quantile regression methods have been used widely in finance to alleviate estimationproblems related...
This paper provides the first thorough investigation of the negative weights that can emerge when co...
Abstract. Quantile regression, as introduced by Koenker and Bassett (1978), may be viewed as an exte...