Two different tools to evaluate quantile regression forecasts are proposed: MAD, to summarize forecast errors, and a fluctuation test to evaluate in-sample predictions. The scores of the PISA test to evaluate students ’ proficiency are considered. Growth analysis relates school attainment to economic growth. The analysis is complemented by investigating the estimated regression and predictions not only at the centre but also in the tails. For out-of-sample forecasts, the estimates in one wave are employed to forecast the following waves. The reliability of in-sample forecasts is controlled by excluding the part of the sample selected by a specific rule: boys to predict girls, public schools to forecast private ones, vocational schools to pr...
A guide to the implementation and interpretation of Quantile Regression models. This book explores t...
The statistical inference based on the ordinary least squares regression is sub-optimal when the dis...
We develop regression-based tests of hypotheses about out of sample prediction errors. Representativ...
Two different tools to evaluate quantile regression forecasts are proposed: MAD, to summarize foreca...
The paper proposes a method for forecasting conditional quantiles. In practice, one often does not k...
International audienceIn this paper, we tackle the problem of prediction and confidence intervals fo...
Exponential smoothing methods do not involve a formal procedure for identifying the underlying data ...
Over the past decades, in educational studies, there is a growing interest in exploring heterogeneou...
Abstract The number of studies addressing issues of inequality in educational outcomes using cogniti...
In the regression framework, prediction intervals are a valuable tool to estimate the value of the r...
Abstract: Recent interest in modern regressionmodelling has focused on extending available (mean) re...
Whether it is possible to improve point, quantile and density forecasts via quantile forecast combin...
Abstract: Recent interest in modern regressionmodelling has focused on extending available (mean) re...
To get a better picture of the future behavior of different economics-related quantities, we need to...
An analytical framework is presented for the evaluation of quantile probability forecasts. It is dem...
A guide to the implementation and interpretation of Quantile Regression models. This book explores t...
The statistical inference based on the ordinary least squares regression is sub-optimal when the dis...
We develop regression-based tests of hypotheses about out of sample prediction errors. Representativ...
Two different tools to evaluate quantile regression forecasts are proposed: MAD, to summarize foreca...
The paper proposes a method for forecasting conditional quantiles. In practice, one often does not k...
International audienceIn this paper, we tackle the problem of prediction and confidence intervals fo...
Exponential smoothing methods do not involve a formal procedure for identifying the underlying data ...
Over the past decades, in educational studies, there is a growing interest in exploring heterogeneou...
Abstract The number of studies addressing issues of inequality in educational outcomes using cogniti...
In the regression framework, prediction intervals are a valuable tool to estimate the value of the r...
Abstract: Recent interest in modern regressionmodelling has focused on extending available (mean) re...
Whether it is possible to improve point, quantile and density forecasts via quantile forecast combin...
Abstract: Recent interest in modern regressionmodelling has focused on extending available (mean) re...
To get a better picture of the future behavior of different economics-related quantities, we need to...
An analytical framework is presented for the evaluation of quantile probability forecasts. It is dem...
A guide to the implementation and interpretation of Quantile Regression models. This book explores t...
The statistical inference based on the ordinary least squares regression is sub-optimal when the dis...
We develop regression-based tests of hypotheses about out of sample prediction errors. Representativ...