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Gene Selection Using Multi-objective Genetic Algorithm Integrating Cellular Automata and Rough Set Theory

机译:基因选择采用多目标遗传算法集成蜂窝自动机和粗糙集理论

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Feature selection is one of the most key problems in the field of machine learning and data mining. It can be done in mainly two different ways, namely, filter approach and wrapper approach. Filter approach is independent of underlying classifier logic and relatively less costly than the wrapper approach which is classifier dependent. Many researchers have applied Genetic algorithm (GA) as wrapper approach for feature selection. In the paper, a novel feature selection method is proposed based on the multi-objective genetic algorithm which is applied on population generated by non-linear uniform hybrid cellular automata. The fitness functions are defined one using set lower bound approximation of rough set theory and the other using Kullbak-Leibler divergence method. A comparative study between proposed method and some leading feature selection methods are given using some popular microarray cancer dataset to demonstrate the effectiveness of the method.
机译:特征选择是机器学习和数据挖掘领域中最关键的问题之一。它可以主要是两种不同的方式,即过滤方法和包装方法。过滤方法与底层分类器逻辑无关,并且比依赖于分类器的包装方法相对较低。许多研究人员将遗传算法(GA)应用于特征选择的包装方法。本文基于多目标遗传算法提出了一种新颖特征选择方法,该遗传算法应用于非线性均匀混合蜂窝蜂窝自动机产生的群体。使用粗糙集理论的设定较低近似近似尺寸的粗糙设定理论和其他使用Kullbak-Leibler发散方法定义了健身功能。使用一些流行的微阵列癌数据集给出了所提出的方法和一些领先特征选择方法之间的比较研究来证明该方法的有效性。

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