Published July 13, 2016
| Version v1
Publication
Feature selection to enhance a two-stage evolutionary algorithm in product unit neural networks for complex classification problems
Description
This paper combines feature selection methods with a two-stage evolutionary classifier based on product unit neural
networks. The enhanced methodology has been tried out with four filters using 18 data sets that report test error
rates about 20 % or above with reference classifiers such as C4.5 or 1-NN. The proposal has also been evaluated in a
liver-transplantation real-world problem with serious troubles in the data distribution and classifiers get low
performance. The study includes an overall empirical comparison between the models obtained with and without
feature selection using different kind of neural networks, like RBF, MLP and other state-of-the-art classifiers.
Statistical tests show that our proposal significantly improves the test accuracy of the previous models. The reduction
percentage in the number of inputs is, on average, above 55 %, thus a greater efficiency is achieved.
Abstract
MICYT TIN2007-68084- C02-02Abstract
MICYT TIN2008-06681-C06-03Abstract
MICYT TIN2011-28956-C02Additional details
Identifiers
- URL
- https://idus.us.es/handle/11441/43538
- URN
- urn:oai:idus.us.es:11441/43538
Origin repository
- Origin repository
- USE