MEMETIC PROGRAMMING WITH THE ATOMIC REPRESENTATION FOR EXTRACTING LOGICAL CLASSIFICATION RULES

Eman Baky, Emad Mabrouk, I. Elsemman
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Abstract

Classification is one of the most popular techniques of data mining. This paper presents an evolutionary approach for designing classifiers for two-class classification problems using an enhanced version of the genetic programming (GP) algorithm, called the Memetic Programming (MP) algorithm. MP can discover relationships between observed data and express them logically. MP aims to obtain a classifier with the largest area under the ROC curve, which has been proved a better performance than traditionally metrics. The proposed approach is being demonstrated by experimenting on some UCI Machine Learning data sets. Results obtained in these experiments reflect the efficiency of the proposed algorithm.
基于原子表示的模因编程提取逻辑分类规则
分类是数据挖掘中最流行的技术之一。本文提出了一种利用遗传规划(GP)算法的改进版本,即模因规划(MP)算法设计两类分类器的进化方法。MP可以发现观察到的数据之间的关系,并将其逻辑地表达出来。MP的目标是获得ROC曲线下面积最大的分类器,这已经被证明比传统的指标有更好的性能。通过在一些UCI机器学习数据集上进行实验,证明了所提出的方法。实验结果反映了该算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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