基于鲁棒集成的类标签噪声下异构分类器组合方法

S. Khalid, S. Arshad
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引用次数: 6

摘要

在本文中,我们引入了一种分类器集成方法来组合数据集中存在类标签噪声的异构分类器。为了提高分类器集成的性能,我们给出了一种预处理方法来滤除类标签噪声。然后使用过滤后的数据学习单个分类器模型。然后,引入一种权值学习方法来学习每个分类器上的权值,从而创建一个分类器集成。我们应用遗传算法来搜索一个最优的权向量,在这个权向量上分类器集成有望给出最好的精度。在各种真实生活数据集上对所提出的方法进行了评估。本文还将所提出的技术与现有的标准集成技术(如Adaboost、Bagging和RSM)进行了比较,以显示所提出的集成方法在存在类别标签噪声的情况下与竞争对手相比的优越性,并显示竞争对手对类别标签噪声的敏感性。
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A Robust Ensemble Based Approach to Combine Heterogeneous Classifiers in the Presence of Class Label Noise
In this paper, we introduced a classifier ensemble approach to combine heterogeneous classifiers in the presence of class label noise in the datasets. To enhance the performance of classifier ensemble, we give a preprocessing approach to filter out this class label noise. The filtered data is then used to learn individual classifier model. After that, a weight learning method is introduced to learn weights on each individual classifier to create a classifier ensemble. We applied genetic algorithm to search for an optimal weight vector on which classifier ensemble is expected to give best accuracy. The proposed approach is evaluated on variety of real life datasets. The proposed technique is also compared with existing standard ensemble techniques such as Adaboost, Bagging and RSM to show the superiority of proposed ensemble method, in the presence of class label noise, as compared to its competitors and also to show the sensitivity of competitors to class label noise.
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