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Static and Dynamic Weights in Ensemble Systems Built by Class-Based Feature Selection Methods

机译:通过基于类的特征选择方法构建的集成系统中的静态和动态权重

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The use of feature selection methods in ensemble systems has been shown to be efficient, since it reduces the dimensionality while increases the diversity among the individual classifiers of these systems. The ReinSel method, a simple reinforcement-based process, for instance, has been proposed to select feature for the individual classifiers of an ensemble system. This method distributes the attributes through the use of a class-based process (using One-Against-All, OAA, classifiers). In this paper, we investigate the use of weights in order to enhance the efficiency of the ensemble systems created by class-based feature selection methods. These weights will not be used in feature selection methods, but in the ensemble systems created as the result of these methods. More specifically, four different types of weights will be used in this investigation, in which three of them are defined before the testing phase and became unchanged during the testing phase (static). The last one uses a knn-based method to define the weights for each testing pattern (dynamic).
机译:已经证明在集成系统中使用特征选择方法是有效的,因为它降低了维数,同时增加了这些系统的各个分类器之间的多样性。 ReinSel方法是一种简单的基于增强的过程,例如,已提出了为集成系统的各个分类器选择特征的方法。此方法通过使用基于类的过程(使用“永无止境”,“ OAA”和“分类器”)来分配属性。在本文中,我们研究了权重的使用,以提高通过基于类的特征选择方法创建的集成系统的效率。这些权重将不会在特征选择方法中使用,而会在这些方法的结果所创建的集成系统中使用。更具体地说,在此调查中将使用四种不同类型的权重,其中三种权重在测试阶段之前定义,在测试阶段(静态)不变。最后一种使用基于knn的方法来定义每个测试模式的权重(动态)。

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