Estudio empírico del enfoque asociativo en el contexto de los problemas de clasificación

Laura Cleofas Sánchez, Anabel Pineda Briseño, Rosa María Valdovinos Rosas, José Salvador Sánchez Garreta, Vicente García Jiménez, Oscar Camacho Nieto, Héctor Pérez Meana, Mariko Nakano Miyatake

Producción científica: Contribución a una revistaArtículorevisión exhaustiva

2 Citas (Scopus)

Resumen

Research carried out by the scientific community has shown that the performance of the classifiers depends not only on the learning rule, if not also on the complexities inherent in the data sets. Some traditional classifiers have been commonly used in the context of classification problems (three Neural Networks, C4.5, SVM, among others). However, the associative approach has been further explored in the recovery context, than in the classification task, and its performance almost has not been analyzed when several complexities in the data are presented. The present investigation analyzes the performance of the associative approach (CHA, CHAT and original Alpha Beta) when three classification problems occur (class imbalance, overlapping and atypical patterns). The results show that the CHAT algorithm recognizes the minority class better than the rest of the classifiers in the context of class imbalance. However, the CHA model ignores the minority class in most cases. In addition, the CHAT algorithm requires well-defined decision boundaries when Wilson's method is applied, because of its performance increases. Also, it was noted that when a balance between the rates is emphasized, the performance of the three classifiers increase (RB, RFBR and CHAT). The original Alfa Beta model shows poor performance when pre-processing the data is done. The performance of the classifiers increases significantly when the SMOTE method is applied, which does not occur without a pre-processing or with a subsampling, in the context of the imbalance of the classes.

Título traducido de la contribuciónEmpirical study of the associative approach in the context of classification problems
Idioma originalEspañol
Páginas (desde-hasta)601-617
Número de páginas17
PublicaciónComputacion y Sistemas
Volumen23
N.º2
DOI
EstadoPublicada - 2019

Palabras clave

  • C4.5
  • Recovery
  • SMOTE.
  • SVM
  • Wilson
  • associative approach
  • atypical patterns
  • classification
  • imbalance
  • neural networks
  • overlap
  • selective

Huella

Profundice en los temas de investigación de 'Estudio empírico del enfoque asociativo en el contexto de los problemas de clasificación'. En conjunto forman una huella única.

Citar esto