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The machine learning classifier based on Multi-Objective Genetic Algorithm

机译:基于多目标遗传算法的机器学习分类器

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This paper presents a machine learning classifier algorithm based on MOGA (Multi-Objective Genetic Algorithm), which applies the information entropy theory to optimize the MOGA and then can be used to discretize the continuous attributes. According to the practical problems, the fitness vector can be constructed by judging multi-objective functions to find the Pareto optimal solutions. Combining the classic set theories with the two relationships, i.e. coverage and contradictory, between chromosomes, more reasonable selection rules can be worked out to delete the redundant chromosomes and get more efficient classification rules. The new algorithm was applied to Iris and Wine dataset from UCI. By comparison, the algorithm in this paper has higher classification accuracy than KNN, C4.5 and NaiveBayes.
机译:本文提出了一种基于MOGA(多目标遗传算法)的机器学习分类器算法,该算法应用信息熵理论对MOGA进行优化,然后可以离散化连续属性。根据实际问题,可以通过判断多目标函数找到帕累托最优解来构造适应度矢量。将经典集合理论与染色体之间的两个关系(即覆盖率和矛盾性)结合起来,可以制定出更合理的选择规则来删除多余的染色体并获得更有效的分类规则。新算法已应用于UCI的Iris和Wine数据集。相比之下,本文算法比KNN,C4.5和NaiveBayes具有更高的分类精度。

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