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Machine learning methods for GEFCom2017 probabilistic load forecasting
Institution:1. Budapest University of Technology and Economics, Hungary;2. Ericsson, Hungary;3. Dmlab, Hungary;4. Enbritely, United Kingdom
Abstract:This paper describes the preprocessing and forecasting methods used by team Orbuculum during the qualifying match of the Global Energy Forecasting Competition 2017 (GEFCom2017). Tree-based algorithms (gradient boosting and quantile random forest) and neural networks made up an ensemble. The ensemble prediction quantiles were obtained by a simple averaging of the ensemble members’ prediction quantiles. The result shows a robust performance according to the pinball loss metric, with the ensemble model achieving third place in the qualifying match of the competition.
Keywords:Global energy forecasting competition  Quantile random forest  Gradient boosting  Neural networks  Deep learning  Ensemble forecasting  Probabilistic forecasting
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