Exponential smoothing methods do not involve a formal procedure for identifying the underlying data generating process. The issue is then whether prediction intervals should be estimated by a theoretical approach, with the assumption that the method is optimal in some sense, or by an empirical procedure. In this paper we present an alternative hybrid approach which applies quantile regression to the empirical fit errors to produce forecast error quantile models. These models are functions of the lead time, as suggested by the theoretical variance expressions. In addition to avoiding the optimality assumption, the method is nonparametric, so there is no need for the common normality assumption. Application of the new approach to simple, Holt...
This paper explores the use of quantile regression for estimation of empirical confidence limits for...
This paper explores the use of quantile regression for estimation of empirical confidence limits for...
Two different tools to evaluate quantile regression forecasts are proposed: MAD, to summarize foreca...
In the regression framework, prediction intervals are a valuable tool to estimate the value of the r...
In the regression framework, prediction intervals are a valuable tool to estimate the value of the r...
Thesis: S.M. in Engineering and Management, Massachusetts Institute of Technology, Engineering Syste...
Inventory control systems typically require the frequent updating of forecasts for many different pr...
Despite a considerable literature on the combination of forecasts, there is little guidance regardin...
Inventory control systems typically require the frequent updating of forecasts for many different pr...
Despite a considerable literature on the combination of forecasts, there is little guidance regardin...
This book integrates the fundamentals of asymptotic theory of statistical inference for time series ...
The procedures of estimating prediction intervals for ARMA processes can be divided into model based...
The procedures of estimating prediction intervals for ARMA processes can be divided into model based...
This study uses quantile regressions to estimate historical forecast error distributions for WASDE f...
This study uses quantile regressions to estimate historical forecast error distributions for WASDE f...
This paper explores the use of quantile regression for estimation of empirical confidence limits for...
This paper explores the use of quantile regression for estimation of empirical confidence limits for...
Two different tools to evaluate quantile regression forecasts are proposed: MAD, to summarize foreca...
In the regression framework, prediction intervals are a valuable tool to estimate the value of the r...
In the regression framework, prediction intervals are a valuable tool to estimate the value of the r...
Thesis: S.M. in Engineering and Management, Massachusetts Institute of Technology, Engineering Syste...
Inventory control systems typically require the frequent updating of forecasts for many different pr...
Despite a considerable literature on the combination of forecasts, there is little guidance regardin...
Inventory control systems typically require the frequent updating of forecasts for many different pr...
Despite a considerable literature on the combination of forecasts, there is little guidance regardin...
This book integrates the fundamentals of asymptotic theory of statistical inference for time series ...
The procedures of estimating prediction intervals for ARMA processes can be divided into model based...
The procedures of estimating prediction intervals for ARMA processes can be divided into model based...
This study uses quantile regressions to estimate historical forecast error distributions for WASDE f...
This study uses quantile regressions to estimate historical forecast error distributions for WASDE f...
This paper explores the use of quantile regression for estimation of empirical confidence limits for...
This paper explores the use of quantile regression for estimation of empirical confidence limits for...
Two different tools to evaluate quantile regression forecasts are proposed: MAD, to summarize foreca...