A hybrid ensemble of machine and statistical learning using confidence-based boosting

Nattawut Chairatanasongporn, S. Jaiyen
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引用次数: 0

Abstract

Nowadays, the classification problems have become more challenging due to the various types of data set. Some data are appropriated for machine learning techniques and some data are appropriated for statistical leaning techniques. This work proposes a new hybrid ensemble of machine and statistical learning models using confidence-based boosting. The proposed method which uses variants of based classifiers can solve classification problems in variant data set. Moreover, combining the confidence value to the current boosting method can improve the performance of classification. The performance of proposed method is compared to the ensemble of decision trees and MRN created by Adaboost.M1 on data sets from UCI. The experimental results show that the proposed method can improve the accuracy in both binary and multiclass classification problems.
使用基于信心的增强的机器和统计学习的混合集成
如今,由于数据集的种类繁多,分类问题变得更加具有挑战性。有些数据适用于机器学习技术,有些数据适用于统计学习技术。这项工作提出了一种新的机器和统计学习模型的混合集成,使用基于置信度的增强。该方法利用基于变量的分类器来解决变量数据集的分类问题。此外,将置信值与现有的增强方法相结合,可以提高分类性能。将该方法的性能与Adaboost创建的决策树集成和MRN进行了比较。M1在UCI的数据集上。实验结果表明,该方法在二分类和多分类问题中均能提高准确率。
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