<p>Any decision-making process that relies on a probabilistic forecast of future events necessarily requires a calibrated forecast. This article proposes new methods for empirically assessing forecast calibration in a multivariate setting where the probabilistic forecast is given by an ensemble of equally probable forecast scenarios. Multivariate properties are mapped to a single dimension through a prerank function and the calibration is subsequently assessed visually through a histogram of the ranks of the observation’s preranks. Average ranking assigns a prerank based on the average univariate rank while band depth ranking employs the concept of functional band depth where the centrality of the observation within the forecast ensemble is...
The relationship between peak timing (A and C) and peak intensity (B and D) ensemble variance and fo...
The application of forecast ensembles to probabilistic weather prediction has spurred considerable i...
This paper proposes a method to construct well-calibrated frequentist prediction regions, with parti...
Any decision making process that relies on a probabilistic forecast of future events necessarily req...
The multilevel Monte Carlo method can efficiently compute statistical estimates of discretized rando...
Ensembles are today routinely applied to estimate uncertainty in numerical predictions of complex sy...
Linear post-processing approaches are proposed and fundamental mechanisms are analyzed by which the ...
International audienceThis paper addresses the problem of calibrating an ensemble for uncertainty es...
[1] This paper addresses the problem of calibrating an ensemble for uncertainty estimation. The cali...
We address the calibration constraint of probability forecasting. We propose a generic method for re...
International audienceUncertainties assessment performed by numerical weather ensemble forecast syst...
Forecast verification is important across scientific disciplines, as it provides a framework for eva...
This is the final version of the article. Available from the American Meteorological Society via the...
Weather predictions are uncertain by nature. This uncertainty is dynamically assessed by a finite se...
Calibration and downscaling of ensemble GCM forecasts is becoming increasingly important for hydrolo...
The relationship between peak timing (A and C) and peak intensity (B and D) ensemble variance and fo...
The application of forecast ensembles to probabilistic weather prediction has spurred considerable i...
This paper proposes a method to construct well-calibrated frequentist prediction regions, with parti...
Any decision making process that relies on a probabilistic forecast of future events necessarily req...
The multilevel Monte Carlo method can efficiently compute statistical estimates of discretized rando...
Ensembles are today routinely applied to estimate uncertainty in numerical predictions of complex sy...
Linear post-processing approaches are proposed and fundamental mechanisms are analyzed by which the ...
International audienceThis paper addresses the problem of calibrating an ensemble for uncertainty es...
[1] This paper addresses the problem of calibrating an ensemble for uncertainty estimation. The cali...
We address the calibration constraint of probability forecasting. We propose a generic method for re...
International audienceUncertainties assessment performed by numerical weather ensemble forecast syst...
Forecast verification is important across scientific disciplines, as it provides a framework for eva...
This is the final version of the article. Available from the American Meteorological Society via the...
Weather predictions are uncertain by nature. This uncertainty is dynamically assessed by a finite se...
Calibration and downscaling of ensemble GCM forecasts is becoming increasingly important for hydrolo...
The relationship between peak timing (A and C) and peak intensity (B and D) ensemble variance and fo...
The application of forecast ensembles to probabilistic weather prediction has spurred considerable i...
This paper proposes a method to construct well-calibrated frequentist prediction regions, with parti...