International audienceEnsemble forecasting resorts to multiple individual forecasts to produce a discrete probability distribution which accurately represents the uncertainties. Before every forecast, a weighted empirical distribution function is derived from the ensemble, so as to minimize the Continuous Ranked Probability Score (CRPS). We apply online learning techniques, which have previously been used for deterministic forecasting, and we adapt them for the minimization of the CRPS. The proposed method theoretically guarantees that the aggregated forecast competes, in terms of CRPS, against the best weighted empirical distribution function with weights constant in time. This is illustrated on synthetic data. Besides, our study improves ...
Weather forecast has been a major concern in various industries such as agriculture, aviation, marit...
Forecast combination algorithms provide a robust solution to noisy data andshifting process dynamics...
Crowdsourcing enables the solicitation of forecasts on a variety of prediction tasks from distribute...
International audienceEnsemble forecasting resorts to multiple individual forecasts to produce a dis...
International audienceWe provide probabilistic forecasts of photovoltaic (PV) production, for severa...
Abstract. With the increasing volume of data in the world, the best approach for learning from this ...
Ensemble prediction systems typically show positive spread-error correlation, but they are subject t...
International audienceIn numerical weather prediction (NWP), the uncertainty about the future state ...
We address the calibration constraint of probability forecasting. We propose a generic method for re...
Dans cette thèse, nous nous intéressons à des problèmes de prévision tour après tour. L'objectif est...
This paper discusses the problem of selecting model parameters in time series forecasting using aggr...
This paper presents an ensemble forecasting method that shows strong results on the M4 Competition d...
When dealing with time series with complex non-stationarities, low retrospective regret on individua...
Weather forecast has been a major concern in various industries such as agriculture, aviation, marit...
Forecast combination algorithms provide a robust solution to noisy data andshifting process dynamics...
Crowdsourcing enables the solicitation of forecasts on a variety of prediction tasks from distribute...
International audienceEnsemble forecasting resorts to multiple individual forecasts to produce a dis...
International audienceWe provide probabilistic forecasts of photovoltaic (PV) production, for severa...
Abstract. With the increasing volume of data in the world, the best approach for learning from this ...
Ensemble prediction systems typically show positive spread-error correlation, but they are subject t...
International audienceIn numerical weather prediction (NWP), the uncertainty about the future state ...
We address the calibration constraint of probability forecasting. We propose a generic method for re...
Dans cette thèse, nous nous intéressons à des problèmes de prévision tour après tour. L'objectif est...
This paper discusses the problem of selecting model parameters in time series forecasting using aggr...
This paper presents an ensemble forecasting method that shows strong results on the M4 Competition d...
When dealing with time series with complex non-stationarities, low retrospective regret on individua...
Weather forecast has been a major concern in various industries such as agriculture, aviation, marit...
Forecast combination algorithms provide a robust solution to noisy data andshifting process dynamics...
Crowdsourcing enables the solicitation of forecasts on a variety of prediction tasks from distribute...