Por favor, use este identificador para citar o enlazar este ítem: http://hdl.handle.net/10259/10032
Título
An experimental evaluation of mixup regression forests
Publicado en
Expert Systems with Applications. 2020, V. 151, 113376
Editorial
Elsevier
Fecha de publicación
2020-08
ISSN
0957-4174
DOI
10.1016/j.eswa.2020.113376
Resumen
Over the past few decades, the remarkable prediction capabilities of ensemble methods have been used within a wide range of applications. Maximization of base-model ensemble accuracy and diversity are the keys to the heightened performance of these methods. One way to achieve diversity for training the base models is to generate artificial/synthetic instances for their incorporation with the original instances. Recently, the mixup method was proposed for improving the classification power of deep neural networks (Zhang, Cissé, Dauphin, and Lopez-Paz, 2017). Mixup method generates artificial instances by combining pairs of instances and their labels, these new instances are used for training the neural networks promoting its regularization. In this paper, new regression tree ensembles trained with mixup, which we will refer to as Mixup Regression Forest, are presented and tested. The experimental study with 61 datasets showed that the mixup approach improved the results of both Random Forest and Rotation Forest.
Palabras clave
Mixup
Regression
Random forest
Rotation forest
Materia
Redes neuronales artificiales
Neural networks (Computer science)
Versión del editor
Aparece en las colecciones
Documento(s) sujeto(s) a una licencia Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 Internacional