Loss functions play a central role in the theory and practice of forecasting. If the loss function is quadratic, the mean of the predictive distribution is the unique optimal point predictor. If the loss is symmetric piecewise linear, any median is an optimal point forecast. Quantiles arise as optimal point forecasts under a general class of economically relevant loss functions, which nests the asymmetric piecewise linear loss, and which we refer to as generalized piecewise linear (GPL). The level of the quantile depends on a generic asymmetry parameter which reflects the possibly distinct costs of underprediction and overprediction. Conversely, a loss function for which quantiles are optimal point forecasts is necessarily GPL. We review ch...
Existing results on the properties and performance of forecast combinations have been derived in the...
Quantiles of probability distributions play a central role in the definition of risk measures (e.g.,...
This paper considers the problem of point prediction based on a predictive distribution, representin...
Forecast is pervasive in all areas of applications in business and daily life and, hence, evaluating...
International audienceIn this paper, we tackle the problem of prediction and confidence intervals fo...
Evaluation of forecast optimality in economics and Þnance has almost exclusively been conducted unde...
Evaluation of forecast optimality in economics and finance has almost exclusively been conducted und...
Whether it is possible to improve point, quantile and density forecasts via quantile forecast combin...
The paper proposes a method for forecasting conditional quantiles. In practice, one often does not k...
Evaluation of forecast optimality in economics and Þnance has almost exclusively been con-ducted und...
Quantile forecasts made across multiple horizons have become an important output of many financial i...
Abstract: Recent interest in modern regressionmodelling has focused on extending available (mean) re...
Value at Risk (VaR) forecasts can be produced from conditional autoregressive VaR models, estimated ...
Motivated by a central banker with an inflation target, we show that the optimal forecast bias under...
Abstract: Recent interest in modern regressionmodelling has focused on extending available (mean) re...
Existing results on the properties and performance of forecast combinations have been derived in the...
Quantiles of probability distributions play a central role in the definition of risk measures (e.g.,...
This paper considers the problem of point prediction based on a predictive distribution, representin...
Forecast is pervasive in all areas of applications in business and daily life and, hence, evaluating...
International audienceIn this paper, we tackle the problem of prediction and confidence intervals fo...
Evaluation of forecast optimality in economics and Þnance has almost exclusively been conducted unde...
Evaluation of forecast optimality in economics and finance has almost exclusively been conducted und...
Whether it is possible to improve point, quantile and density forecasts via quantile forecast combin...
The paper proposes a method for forecasting conditional quantiles. In practice, one often does not k...
Evaluation of forecast optimality in economics and Þnance has almost exclusively been con-ducted und...
Quantile forecasts made across multiple horizons have become an important output of many financial i...
Abstract: Recent interest in modern regressionmodelling has focused on extending available (mean) re...
Value at Risk (VaR) forecasts can be produced from conditional autoregressive VaR models, estimated ...
Motivated by a central banker with an inflation target, we show that the optimal forecast bias under...
Abstract: Recent interest in modern regressionmodelling has focused on extending available (mean) re...
Existing results on the properties and performance of forecast combinations have been derived in the...
Quantiles of probability distributions play a central role in the definition of risk measures (e.g.,...
This paper considers the problem of point prediction based on a predictive distribution, representin...