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Single Classifier-based Multiple Classification Scheme for weak classifiers: An experimental comparison

机译:基于单分类器的弱分类器多重分类方案:实验比较

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摘要

In this paper, we propose a Single Classifier-based Multiple Classification Scheme (SMCS) that uses only a single classifier to generate multiple classifications for a given test data point. The SMCS does not require the presence of multiple classifiers, and generates diversity through the creation of pseudo test samples. The pseudo test sample generation mechanism allows the SMCS to adapt to dynamic environments without multiple classifier training. Moreover, because of the presence of multiple classifications, classification combination schemes, such as majority voting, can be applied, and so the mechanism may improve the recognition rate in a manner similar to that of Multiple Classifier Systems (MCS). The experimental results confirm the validity of the proposed SMCS as applicable to many classification systems. Even without parameter selection, the average performance of the SMCS is still comparable to that of Bagging or Boosting. Moreover, the SMCS and the traditional MCS scheme are not mutually exclusive, and the SMCS can be applied along with traditional MCS, such as Bagging and Boosting.
机译:在本文中,我们提出了基于单一分类器的多重分类方案(SMCS),该方案仅使用单个分类器为给定的测试数据点生成多个分类。 SMCS不需要多个分类器,并且通过创建伪测试样本来产生多样性。伪测试样本生成机制使SMCS无需多分类器训练即可适应动态环境。此外,由于存在多个分类,因此可以应用诸如多数投票之类的分类组合方案,因此该机制可以以类似于多重分类器系统(MCS)的方式来提高识别率。实验结果证实了所提出的SMCS适用于许多分类系统的有效性。即使没有选择参数,SMCS的平均性能仍可与装袋或提升的性能相媲美。此外,SMCS和传统MCS方案不是互斥的,并且SMCS可以与传统MCS(例如Bagging和Boosting)一起应用。

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