可靠性导向模糊分类器集成

Tianhua Chen, P. Su, C. Shang, Q. Shen
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引用次数: 5

摘要

分类器集成是提高分类性能的重要途径。因此,文献中提出了不同的建议,提供了一系列构建和聚合分类器集成的方法。然而,由此产生的系统可能包含不可靠的成员,在集合中有错误或有偏见的判断。去除不可靠的成员是优化这类系统整体性能所必需的。较小的集成包含较少的集成成员,也有助于放松对计算内存的需求,从而增强系统的运行时效率。为了区分不同集成成员的潜在贡献,同时减少任何不可靠判断对系统的不利影响,将基于最近邻的可靠性度量纳入分类器集成选择过程。特别是,所选集成成员的可靠性被视为一个应力函数,由此启发式地为最终聚合决策生成参数相关权重。实验调查进行,证明了所提出的方法的有效性,其中模糊分类器被用作新兴集成的基本成员。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reliability-guided fuzzy classifier ensemble
Classifier ensembles form an important approach to improving classification performance. As such, there have been different proposals made in the literature that provide a range of means to construct and aggregate classifier ensembles. However, the resulting systems may contain unreliable members with false or biased judgements in the ensemble. The removal of unreliable members is necessary to optimise the overall performance of such systems. Smaller ensembles involving reduced ensemble members also helps relax the requirement of computational memory, thereby strengthening the system's run-time efficiency. To differentiate the potential contributions of different ensemble members while reducing the adverse impact of any unreliable judgement upon the system, a nearest neighbour-based reliability measure is incorporated into the process of classifier ensemble selection. In particular, reliabilities of selected ensemble members are perceived as a stress function, from which argument-dependent weights are heuristically generated for final aggregated decision. Experimental investigations are carried out, demonstrating the efficacy of the proposed approach, where fuzzy classifiers are utilised as base members of the emerging ensemble.
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