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arxiv: 2502.00871 · v1 · pith:LVE7FSXR · submitted 2025-02-02 · cs.LG

Modified Adaptive Tree-Structured Parzen Estimator for Hyperparameter Optimization

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classification cs.LG
keywords optimizationatpehyperparameteradaptiveestimatorlearningmachinemodifications
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In this paper, we review hyperparameter optimization methods for machine learning models, with a particular focus on the Adaptive Tree-Structured Parzen Estimator (ATPE) algorithm. We propose several modifications to ATPE and assess their efficacy on a diverse set of standard benchmark functions. Experimental results demonstrate that the proposed modifications significantly improve the effectiveness of ATPE hyperparameter optimization on selected benchmarks, a finding that holds practical relevance for their application in real-world machine learning / optimization tasks.

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