Autores
Sossa Azuela Juan Humberto
Título Smooth dendrite morphological neurons
Tipo Revista
Sub-tipo JCR
Descripción Neural Networks
Resumen A typical feature of hyperbox-based dendrite morphological neurons (DMN) is the generation of sharp and rough decision boundaries that inaccurately track the distribution shape of classes of patterns. This feature is because the minimum and maximum activation functions force the decision boundaries to match the faces of the hyperboxes. To improve the DMN response, we introduce a dendritic model that uses smooth maximum and minimum functions to soften the decision boundaries. The classification performance assessment is conducted on nine synthetic and 28 real-world datasets. Based on the experimental results, we demonstrate that the smooth activation functions improve the generalization capacity of DMN. The proposed approach is competitive with four machine learning techniques, namely, Multilayer Perceptron, Radial Basis Function Network, Support Vector Machine, and Nearest Neighbor algorithm. Besides, the computational complexity of DMN training is lower than MLP and SVM classifiers. © 2021 Elsevier Ltd
Observaciones DOI 10.1016/j.neunet.2020.12.021
Lugar Oxford
País Reino Unido
No. de páginas 40-53
Vol. / Cap. v. 136
Inicio 2021-04-01
Fin
ISBN/ISSN