Lift What You Can: Green Online Learning with Heterogeneous Ensembles

Ensemble methods for stream mining necessitate managing multiple models and updating them as data distributions evolve. Considering the calls for more sustainability, established methods are however not sufficiently considerate of ensemble members’ computational expenses and instead overly focus on predictive capabilities. To address these challenges and enable green online learning, we propose heterogeneous online ensembles (HEROS). For every training step, HEROS chooses a subset of models from a pool of models initialized with diverse hyperparameter choices under resource constraints to train. We introduce a Markov decision process to theoretically capture the trade-offs between predictive performance and sustainability constraints. Based on this framework, we present different policies for choosing which models to train on incoming data. Most notably, we propose the novel Zeta-policy, which focuses on training near-optimal models at reduced costs. Using a stochastic model, we theoretically prove that our Zeta-policy achieves near optimal performance while using fewer resources compared to the best performing policy. In our experiments across 11 benchmark datasets, we find empiric evidence that our Zeta-policy is a strong contribution to the state-of-the-art, demonstrating highly accurate performance, in some cases even outperforming competitors, and simultaneously being much more resource-friendly.

  • Published in:
    Data Mining and Knowledge Discovery
  • Type:
    Article
  • Authors:
    Köbschall, Kirsten; Buschjäger, Sebastian; Fischer, Raphael; Hartung, Lisa; Kramer, Stefan
  • Year:
    2026

Citation information

Köbschall, Kirsten; Buschjäger, Sebastian; Fischer, Raphael; Hartung, Lisa; Kramer, Stefan: Lift What You Can: Green Online Learning with Heterogeneous Ensembles, Data Mining and Knowledge Discovery, 2026, 40, 3, Koebschall.etal.2026a,

Associated Lamarr Researchers

portrait of Lamarr guest author Kirsten Körbschall

Kirsten Köbschall

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lamarr institute person Buschjager Sebastian - Lamarr Institute for Machine Learning (ML) and Artificial Intelligence (AI)

Dr. Sebastian Buschjäger

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Portrait of Raphael Fischer.

Dr. Raphael Fischer

Postdoctoral Researcher Resource-aware ML to the profile