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ASML: A Scalable and Efficient AutoML Solution for Data Streams

  • Nilesh Verma
  • , Albert Bifet
  • , Bernhard Pfahringer
  • , Maroua Bahri
  • University of Waikato
  • Inria Paris

Résultats de recherche: Contribution à un journalArticle de conférenceRevue par des pairs

Résumé

Online learning poses a significant challenge to AutoML, as the best model and configuration may change depending on the data distribution. To address this challenge, we propose Automated Streaming Machine Learning (ASML), an online learning framework that automatically finds the best machine learning models and their configurations for changing data streams. It adapts to the online learning scenario by continuously exploring a large and diverse pipeline configuration space. It uses an adaptive optimisation technique that utilizes the current best design, adaptive random directed nearby search, and an ensemble of best performing pipelines. We experimented with real and synthetic drifting data streams and showed that ASML can build accurate and adaptive pipelines by constantly exploring and responding to changes. In several datasets, it outperforms existing online AutoML and state-of-the-art online learning algorithms.

langue originaleAnglais
journalProceedings of Machine Learning Research
Volume256
étatPublié - 1 janv. 2024
Modification externeOui
Evénement3rd International Conference on Automated Machine Learning, AutoML 2024 - Paris, France
Durée: 9 sept. 202412 sept. 2024

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