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A Genetic Programming Approach to Binary Classification Problem

Leo Willyanto Santoso, Bhopendra Singh, S. Rajest, R. Regin, Karrar Kadhim

2020EAI Endorsed Transactions on Energy Web70 citationsDOIOpen Access PDF

Abstract

The Binary classification is the most challenging problem in machine learning. One of the most promising technique to solve this problem is by implementing genetic programming (GP). GP is one of Evolutionary Algorithm (EA) that used to solve problems that humans do not know how to solve it directly. The objectives of this research is to demonstrate the use of genetic programming in this type of problems; that is, other types of techniques are typically used, e.g., regression, artificial neural networks. Genetic programming presents an advantage compared to those techniques, which is that it does not need an a priori definition of its structure. The algorithm evolves automatically until finding a model that best fits a set of training data. Feature engineering was considered to improve the accuracy. In this research, feature transformation and feature creation were implemented. Thus, genetic programming can be considered as an alternative option for the development of intelligent systems mainly in the pattern recognition field.

Topics & Concepts

Genetic programmingComputer scienceArtificial intelligenceFeature (linguistics)Machine learningGenetic representationGenetic algorithmField (mathematics)Evolutionary programmingA priori and a posterioriSet (abstract data type)Binary classificationArtificial neural networkSupport vector machineMathematicsProgramming languagePhilosophyPure mathematicsEpistemologyLinguisticsEvolutionary Algorithms and ApplicationsMetaheuristic Optimization Algorithms ResearchMachine Learning and Data Classification