A Pareto-based Ensemble with Feature and Instance Selection for Learning from Multi-Class Imbalanced Datasets

Author:

Fernández Alberto1,Carmona Cristobal José23,José del Jesus María4,Herrera Francisco15

Affiliation:

1. Department of Computer Science and Artificial Intelligence, University of Granada, Granada 18071, Spain

2. Department of Civil Engineering, University of Burgos, Burgos 09006, Spain

3. Leicester School of Pharmacy, De Montfort University, Leicester, LE1 9BH, UK

4. Department of Computer Science, University of Jaén, Jaén 23071, Spain

5. Faculty of Computing and Information Technology — North Jeddah, King Abdulaziz University (KAU), Jeddah 80200, Saudi Arabia

Abstract

Imbalanced classification is related to those problems that have an uneven distribution among classes. In addition to the former, when instances are located into the overlapped areas, the correct modeling of the problem becomes harder. Current solutions for both issues are often focused on the binary case study, as multi-class datasets require an additional effort to be addressed. In this research, we overcome these problems by carrying out a combination between feature and instance selections. Feature selection will allow simplifying the overlapping areas easing the generation of rules to distinguish among the classes. Selection of instances from all classes will address the imbalance itself by finding the most appropriate class distribution for the learning task, as well as possibly removing noise and difficult borderline examples. For the sake of obtaining an optimal joint set of features and instances, we embedded the searching for both parameters in a Multi-Objective Evolutionary Algorithm, using the C4.5 decision tree as baseline classifier in this wrapper approach. The multi-objective scheme allows taking a double advantage: the search space becomes broader, and we may provide a set of different solutions in order to build an ensemble of classifiers. This proposal has been contrasted versus several state-of-the-art solutions on imbalanced classification showing excellent results in both binary and multi-class problems.

Publisher

World Scientific Pub Co Pte Lt

Subject

Computer Networks and Communications,General Medicine

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