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Main Authors: Pfitzner, Léo, Wintenberger, Olivier, Mestre, Olivier
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2506.15216
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author Pfitzner, Léo
Wintenberger, Olivier
Mestre, Olivier
author_facet Pfitzner, Léo
Wintenberger, Olivier
Mestre, Olivier
contents In this paper we improve on the temperature predictions made with (online) Expert Aggregation (EA) [Cesa-Bianchi and Lugosi, 2006] in Part I. In particular, we make the aggregation more reactive, whilst maintaining at least the same root mean squared error and reducing the number of large errors. We have achieved this by using the Sleeping Expert Framework (SEF) [Freund et al., 1997, Devaine et al., 2013], which allows the more efficient use of biased experts (bad on average but which may be good at some point). To deal with the fact that, unlike in Devaine et al. [2013], we do not know in advance when to use these biased experts, we resorted to gradient boosted regression trees [Chen and Guestrin, 2016] and provide regret bounds against sequences of experts [Mourtada and Maillard, 2017] which take into account this uncertainty. We applied this in a fully online way on BOA [Wintenberger, 2024], an adaptive aggregation with second order regret bounds, which had the best results in Part I. Finally, we made a meta-aggregation with the EA follow the leader. This chooses whether or not to use the SEF in order to limit the possible noise added by the SEF.
format Preprint
id arxiv_https___arxiv_org_abs_2506_15216
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Contribution of expert aggregation to temperature prediction part II: Second order bounds with sleeping experts
Pfitzner, Léo
Wintenberger, Olivier
Mestre, Olivier
Optimization and Control
In this paper we improve on the temperature predictions made with (online) Expert Aggregation (EA) [Cesa-Bianchi and Lugosi, 2006] in Part I. In particular, we make the aggregation more reactive, whilst maintaining at least the same root mean squared error and reducing the number of large errors. We have achieved this by using the Sleeping Expert Framework (SEF) [Freund et al., 1997, Devaine et al., 2013], which allows the more efficient use of biased experts (bad on average but which may be good at some point). To deal with the fact that, unlike in Devaine et al. [2013], we do not know in advance when to use these biased experts, we resorted to gradient boosted regression trees [Chen and Guestrin, 2016] and provide regret bounds against sequences of experts [Mourtada and Maillard, 2017] which take into account this uncertainty. We applied this in a fully online way on BOA [Wintenberger, 2024], an adaptive aggregation with second order regret bounds, which had the best results in Part I. Finally, we made a meta-aggregation with the EA follow the leader. This chooses whether or not to use the SEF in order to limit the possible noise added by the SEF.
title Contribution of expert aggregation to temperature prediction part II: Second order bounds with sleeping experts
topic Optimization and Control
url https://arxiv.org/abs/2506.15216