Please use this identifier to cite or link to this item: http://hdl.handle.net/11718/27761
Title: A linear programming-based hyper local search for tuning hyperparameters
Authors: Sinha, Ankur
Gunwal, Satender
Keywords: Bilevel optimization;Machine learning;Hyperparameter tuning;Linear programming
Issue Date: 2-Apr-2025
Publisher: Elsevier
Abstract: We introduce a linear programming-based approach for hyperparameter tuning of machine learning models. The approach finetunes continuous hyperparameters and model parameters through a linear program, enhancing model generalization in the vicinity of an initial model. The proposed method converts hyperparameter optimization into a bilevel program and identifies a descent direction to improve validation loss. The results demonstrate improvements in most cases across regression, machine learning, and deep learning tasks, with test performance enhancements ranging from 0.3% to 28.1%.
Description: We introduce a linear programming-based approach for hyperparameter tuning of machine learning models. The approach finetunes continuous hyperparameters and model parameters through a linear program, enhancing model generalization in the vicinity of an initial model. The proposed method converts hyperparameter optimization into a bilevel program and identifies a descent direction to improve validation loss. The results demonstrate improvements in most cases across regression, machine learning, and deep learning tasks, with test performance enhancements ranging from 0.3% to 28.1%.
URI: http://hdl.handle.net/11718/27761
ISSN: 0167-6377
Appears in Collections:Journal Articles

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