21263@AAAI

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#1 Bandit Limited Discrepancy Search and Application to Machine Learning Pipeline Optimization [PDF] [Copy] [Kimi]

Authors: Akihiro Kishimoto ; Djallel Bouneffouf ; Radu Marinescu ; Parikshit Ram ; Ambrish Rawat ; Martin Wistuba ; Paulito Palmes ; Adi Botea

Optimizing a machine learning (ML) pipeline has been an important topic of AI and ML. Despite recent progress, pipeline optimization remains a challenging problem, due to potentially many combinations to consider as well as slow training and validation. We present the BLDS algorithm for optimized algorithm selection (ML operations) in a fixed ML pipeline structure. BLDS performs multi-fidelity optimization for selecting ML algorithms trained with smaller computational overhead, while controlling its pipeline search based on multi-armed bandit and limited discrepancy search. Our experiments on well-known classification benchmarks show that BLDS is superior to competing algorithms. We also combine BLDS with hyperparameter optimization, empirically showing the advantage of BLDS.