A Review of Supervised Classification based on Contrast Patterns: Applications, Trends, and Challenges
Octavio Loyola‐González, Miguel Angel Medina‐Pérez, Kim‐Kwang Raymond Choo
Abstract
Supervised classification based on Contrast Patterns (CP) is a trending topic in the pattern recognition literature, partly because it contains an important family of both understandable and accurate classifiers. In this paper, we survey 105 articles and provide an in-depth review of CP-based supervised classification and its applications. Based on our review, we present a taxonomy of the existing application domains of CP-based supervised classification, and a scientometric study. We also discuss potential future research opportunities.
Topics & Concepts
Computer scienceContrast (vision)Supervised learningArtificial intelligenceTaxonomy (biology)Machine learningPattern recognition (psychology)Data miningInformation retrievalArtificial neural networkBotanyBiologyData Mining Algorithms and ApplicationsMachine Learning and Data ClassificationImbalanced Data Classification Techniques