Artículos de revistas
A binary-constrained Geometric Semantic Genetic Programming for feature selection purposes
Fecha
2017-12-01Registro en:
Pattern Recognition Letters. Amsterdam: Elsevier Science Bv, v. 100, p. 59-66, 2017.
0167-8655
10.1016/j.patrec.2017.10.002
WOS:000418101300009
WOS000418101300009.pdf
Autor
Universidade Estadual Paulista (Unesp)
Sao Paulo Southwestern Coll
Institución
Resumen
Feature selection concerns the task of finding the subset of features that are most relevant to some specific problem in the context of machine learning. By selecting proper features, one can reduce the computational complexity of the learned model, and to possibly enhance its effectiveness by reducing the well-known overfitting. During the last years, the problem of feature selection has been modeled as an optimization task, where the idea is to find the subset of features that maximize some fitness function, which can be a given classifier's accuracy or even some measure concerning the samples' separability in the feature space, for instance. In this paper, we introduced Geometric Semantic Genetic Programming (GSGP) in the context of feature selection, and we experimentally showed it can work properly with both conic and non-conic fitness landscapes. We observed that there is no need to restrict the feature selection modeling into GSGP constraints, which can be quite useful to adopt the semantic operators to a broader range of applications. (C) 2017 Elsevier B.V. All rights reserved.