2021
DOI: 10.3390/math9182334
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RHOASo: An Early Stop Hyper-Parameter Optimization Algorithm

Abstract: This work proposes a new algorithm for optimizing hyper-parameters of a machine learning algorithm, RHOASo, based on conditional optimization of concave asymptotic functions. A comparative analysis of the algorithm is presented, giving particular emphasis to two important properties: the capability of the algorithm to work efficiently with a small part of a dataset and to finish the tuning process automatically, that is, without making explicit, by the user, the number of iterations that the algorithm must per… Show more

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Cited by 5 publications
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