Artículos de revistas
Building binary-tree-based multiclass classifiers using separability measures
Fecha
2010Registro en:
NEUROCOMPUTING, v.73, n.16-18, Special Issue, p.2837-2845, 2010
0925-2312
10.1016/j.neucom.2010.03.027
Autor
LORENA, Ana Carolina
CARVALHO, Andre C. P. L. F. de
Institución
Resumen
Various popular machine learning techniques, like support vector machines, are originally conceived for the solution of two-class (binary) classification problems. However, a large number of real problems present more than two classes. A common approach to generalize binary learning techniques to solve problems with more than two classes, also known as multiclass classification problems, consists of hierarchically decomposing the multiclass problem into multiple binary sub-problems, whose outputs are combined to define the predicted class. This strategy results in a tree of binary classifiers, where each internal node corresponds to a binary classifier distinguishing two groups of classes and the leaf nodes correspond to the problem classes. This paper investigates how measures of the separability between classes can be employed in the construction of binary-tree-based multiclass classifiers, adapting the decompositions performed to each particular multiclass problem. (C) 2010 Elsevier B.V. All rights reserved.