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Improving Ensemble Decision Tree Performance Using Adaboost and Bagging

机译:使用Adaboost和Bagging改进合奏决策树性能

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Ensemble classifier systems are considered as one of the most promising in medical data classification and the performance of deceision tree classifier can be increased by the ensemble method as it is proven to be better than single classifiers. However, in a ensemble settings the performance depends on the selection of suitable base classifier. This research employed two prominent esemble s namely Adaboost and Bagging with base classifiers such as Random Forest, Random Tree, j48, j48grafts and Logistic Model Regression (LMT) that have been selected independently. The empirical study shows that the performance varries when different base classifiers are selected and even some places overfitting issue also been noted. The evidence shows that ensemble decision tree classfiers using Adaboost and Bagging improves the performance of selected medical data sets.
机译:集合分类器系统被认为是医疗数据分类中最有前途的一个,并且可以通过集合方法增加解除树分类器的性能,因为它被证明比单个分类器更好。但是,在集合设置中,性能取决于合适的基础分类器的选择。本研究采用了两个突出的ASEMBle S即Adaboost和Bagging,如独立选择的随机森林,随机树,J48,J48GROFTS和Logistic模型回归(LMT)。实证研究表明,选择不同基本分类器的性能vRARIES,甚至一些地方也被注意到了过度装箱的问题。证据表明,使用AdaBoost和Bagging的集合决策树类别提高了所选医疗数据集的性能。

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