Título

Classification on imbalanced data sets, taking advantage of errors to improve performance

Autor

Jair Cervantes Canales

Farid García Lamont

ASDRUBAL LOPEZ CHAU

Nivel de Acceso

Acceso Abierto

Resumen o descripción

Classification methods usually exhibit a poor performance when they are applied on imbalanced data sets. In order to overcome this problem, some algorithms have been proposed in the last decade. Most of them generate synthetic instances in order to balance data sets, regardless the classification algorithm. These methods work reasonably well in most cases; however, they tend to cause over-fitting. In this paper, we propose a method to face the imbalance problem. Our approach, which is very simple to implement, works in two phases; the first one detects instances that are difficult to predict correctly for classification methods. These instances are then categorized into “noisy” and “secure”, where the former refers to those instances whose most of their nearest neighbors belong to the opposite class. The second phase of our method, consists in generating a number of synthetic instances for each one of those that are difficult to predict correctly. After applying our method to data sets, the AUC area of classifiers is improved dramatically. We compare our method with others of the state-of-the-art, using more than 10 data sets.

Editor

Springer

Fecha de publicación

2015

Tipo de publicación

Capítulo de libro

Fuente

0302-9743

978-3-319-22052-9

Idioma

Inglés

Relación

10.1007/978-3-319-22053-6_8;

Audiencia

Estudiantes

Investigadores

Repositorio Orígen

REPOSITORIO INSTITUCIONAL DE LA UAEM

Descargas

291

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