Effect of the Sampling of a Dataset in the Hyperparameter Optimization Phase over the Efficiency of a Machine Learning Algorithm

Author:

DeCastro-García Noemí1ORCID,Muñoz Castañeda Ángel Luis2,Escudero García David2,Carriegos Miguel V.1

Affiliation:

1. Departamento de Matemáticas, Universidad de León, Campus de Vegazana s/n, 24071 León, Spain

2. Research Institute on Applied Sciences in Cybersecurity, Universidad de León, Campus de Vegazana s/n, 24071 León, Spain

Abstract

Selecting the best configuration of hyperparameter values for a Machine Learning model yields directly in the performance of the model on the dataset. It is a laborious task that usually requires deep knowledge of the hyperparameter optimizations methods and the Machine Learning algorithms. Although there exist several automatic optimization techniques, these usually take significant resources, increasing the dynamic complexity in order to obtain a great accuracy. Since one of the most critical aspects in this computational consume is the available dataset, among others, in this paper we perform a study of the effect of using different partitions of a dataset in the hyperparameter optimization phase over the efficiency of a Machine Learning algorithm. Nonparametric inference has been used to measure the rate of different behaviors of the accuracy, time, and spatial complexity that are obtained among the partitions and the whole dataset. Also, a level of gain is assigned to each partition allowing us to study patterns and allocate whose samples are more profitable. Since Cybersecurity is a discipline in which the efficiency of Artificial Intelligence techniques is a key aspect in order to extract actionable knowledge, the statistical analyses have been carried out over five Cybersecurity datasets.

Funder

Spanish National Cybersecurity Institute

Publisher

Hindawi Limited

Subject

Multidisciplinary,General Computer Science

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