将分类器多样性评价与基于特征选择的分类器集成约简相结合

Gang Yao, F. Chao, Hualin Zeng, Minghui Shi, Min Jiang, Changle Zhou
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引用次数: 8

摘要

分类器集成提高了单个分类器系统的性能。然而,一个包含过多分类器的分类器集成可能会占用大量的计算时间。本文提出了一种新的集成子集评估方法,该方法将分类器多样性测度集成到分类器集成约简框架中。该方法采用了三种传统的多样性算法和一种新开发的多样性度量方法来计算分类器集成约简框架下的多样性优劣。实验数据表明,该方法不仅能满足准确率高、尺寸小的要求,而且大大缩短了运行时间。当精度要求不是很严格,但运行时间要求比较严格时,提出的方法是一个很好的选择。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrate classifier diversity evaluation to feature selection based classifier ensemble reduction
Classifier ensembles improve the performance of single classifier system. However, a classifier ensemble with too many classifiers may occupy a large number of computational time. This paper proposes a new ensemble subset evaluation method that integrates classifier diversity measures into a classifier ensemble reduction framework. The approach is implemented by using three conventional diversity algorithms and one new developed diversity measure method to calculate the diversity's merits within the classifier ensemble reduction framework. The subset evaluation method is demonstrated by the experimental data: the method not only can meet the requirements of high accuracy rate and fewer size, but also its running time is greatly shortened. When the accuracy requirements are not very strict, but the the running time requirements is more stringent, the proposed method is a good choice.
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