Efficient Hyperparameter Tuning with Dynamic Accuracy Derivative-Free Optimization
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Ehrhardt, Matthias
Roberts, Lindon
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Neural Information Processing Systems Foundation
Abstract
Many machine learning solutions are framed as optimization problems which rely on good hyperparameters. Algorithms for tuning these hyperparameters usually assume access to exact solutions to
the underlying learning problem, which is typically not practical. Here, we apply a recent dynamic
accuracy derivative-free optimization method to hyperparameter tuning, which allows inexact evaluations of the learning problem while retaining convergence guarantees. We test the method on
the problem of learning elastic net weights for a logistic classifier, and demonstrate its robustness
and efficiency compared to a fixed accuracy approach. This demonstrates a promising approach for
hyperparameter tuning, with both convergence guarantees and practical performance.
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Advances in Neural Information Processing Systems
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Free Access via publisher website
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Restricted until
2099-12-31