A Survey of Predictive Modeling on Imbalanced Domains

Author:

Branco Paula1,Torgo Luís1,Ribeiro Rita P.1

Affiliation:

1. LIAAD-INESC TEC, DCC-Faculty of Sciences, University of Porto, Porto, Portugal

Abstract

Many real-world data-mining applications involve obtaining predictive models using datasets with strongly imbalanced distributions of the target variable. Frequently, the least-common values of this target variable are associated with events that are highly relevant for end users (e.g., fraud detection, unusual returns on stock markets, anticipation of catastrophes, etc.). Moreover, the events may have different costs and benefits, which, when associated with the rarity of some of them on the available training data, creates serious problems to predictive modeling techniques. This article presents a survey of existing techniques for handling these important applications of predictive analytics. Although most of the existing work addresses classification tasks (nominal target variables), we also describe methods designed to handle similar problems within regression tasks (numeric target variables). In this survey, we discuss the main challenges raised by imbalanced domains, propose a definition of the problem, describe the main approaches to these tasks, propose a taxonomy of the methods, summarize the conclusions of existing comparative studies as well as some theoretical analyses of some methods, and refer to some related problems within predictive modeling.

Funder

North Portugal Regional Operational Programme

European Regional Development Fund

Fundação para a Ciência e a Tecnologia

Publisher

Association for Computing Machinery (ACM)

Subject

General Computer Science,Theoretical Computer Science

Reference251 articles.

1. Roberto Alejo Vicente García and J. Horacio Pacheco-Sánchez. 2014. An efficient over-sampling approach based on mean square error back-propagation for dealing with the multi-class imbalance problem. Neur. Process. Lett. (2014) 1--15. 10.1007/s11063-014-9376-3 Roberto Alejo Vicente García and J. Horacio Pacheco-Sánchez. 2014. An efficient over-sampling approach based on mean square error back-propagation for dealing with the multi-class imbalance problem. Neur. Process. Lett. (2014) 1--15. 10.1007/s11063-014-9376-3

2. A hybrid method to face class overlap and class imbalance on neural networks and multi-class scenarios

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