Autores
Jiménez Cruz Raul
Velázquez Rodríguez José Luis
López Yáñez Itzamá
Villuendas Rey Yenny
Yáñez Márquez Cornelio
Título Supervised classification of diseases based on an improved associative algorithm
Tipo Revista
Sub-tipo JCR
Descripción Mathematics
Resumen The linear associator is a classic associative memory model. However, due to its low performance, it is pertinent to note that very few linear associator applications have been published. The reason for this is that this model requires the vectors representing the patterns to be orthonormal, which is a big restriction. Some researchers have tried to create orthogonal projections to the vectors to feed the linear associator. However, this solution has serious drawbacks. This paper presents a proposal that effectively improves the performance of the linear associator when acting as a pattern classifier. For this, the proposal involves transforming the dataset using a powerful mathematical tool: the singular value decomposition. To perform the experiments, we selected fourteen medical datasets of two classes. All datasets exhibit balance, so it is possible to use accuracy as a performance measure. The effectiveness of our proposal was compared against nine supervised classifiers of the most important approaches (Bayes, nearest neighbors, decision trees, support vector machines, and neural networks), including three classifier ensembles. The Friedman and Holm tests show that our proposal had a significantly better performance than four of the nine classifiers. Furthermore, there are no significant differences against the other five, although three of them are ensembles. © 2021 by the authors. Licensee MDPI, Basel, Switzerland.
Observaciones DOI 10.3390/math9131458
Lugar Basel
País Suiza
No. de páginas Article number 1458
Vol. / Cap. v. 9 no. 13
Inicio 2021-07-01
Fin
ISBN/ISSN