The evaluation of heterogeneous classifier ensembles for Turkish texts

Z. H. Kilimci, S. Akyokuş, S. İ. Omurca
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引用次数: 4

Abstract

The basic idea behind the classifier ensembles is to use more than one classifier by expecting to improve the overall accuracy. It is known that the classifier ensembles boost the overall classification performance by depending on two factors namely, individual success of the base learners and diversity. One way of providing diversity is to use the same or different type of base learners. When the same type of base learners is used, the diversity is realized by using different training data subsets for each of base classifiers. When different type of base classifiers used to achieve diversity, then ensemble system is called heterogeneous. In this paper, we focus on the heterogonous ensembles that use different types of base learners. An ensemble system based on classification algorithms, naïve Bayes, support vector machine and random forest is used to measure the effectiveness of heterogeneous classifier ensembles by conducting experiments on Turkish texts. Experiment results demonstrate that the usage of heterogeneous ensembles improves classification performance for Turkish texts and encourages to evaluate the impact of heterogeneous ensembles for the other agglutinative languages.
土耳其文本异构分类器集成的评价
分类器集成背后的基本思想是使用多个分类器,期望提高整体准确性。众所周知,分类器集成提高整体分类性能取决于两个因素,即基础学习器的个体成功和多样性。提供多样性的一种方法是使用相同或不同类型的基础学习器。当使用相同类型的基学习器时,通过对每个基分类器使用不同的训练数据子集来实现多样性。当使用不同类型的基分类器实现多样性时,则称集成系统为异构系统。在本文中,我们重点研究了使用不同类型的基学习器的异构集成。基于分类算法、naïve贝叶斯、支持向量机和随机森林的集成系统,通过对土耳其语文本进行实验,测量异构分类器集成的有效性。实验结果表明,异质集成的使用提高了土耳其语文本的分类性能,并鼓励评估异质集成对其他粘合语言的影响。
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