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A method for dynamic ensemble selection based on a filter and an adaptive distance to improve the quality of the regions of competence

机译:一种基于滤波器和自适应距离的动态集成选择方法,以提高能力区域的质量

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Dynamic classifier selection systems aim to select a group of classifiers that is most adequate for a specific query pattern. This is done by defining a region around the query pattern and analyzing the competence of the classifiers in this region. However, the regions are often surrounded by noise which can difficult the classifier selection. This fact makes the performance of most dynamic selection systems no better than static selections. In this paper we demonstrate that the performance of dynamic selection systems end up limited by the quality of the regions extracted. Thereafter, we propose a new dynamic classifier selection system that improves the regions of competence in order to achieve higher recognition rates. Results obtained from several classification databased show the proposed method not only significantly increase the recognition performance, but also decreases the computational cost.
机译:动态分类器选择系统旨在选择最适合特定查询模式的一组分类器。这是通过在查询模式周围定义一个区域并分析该区域中分类器的能力来完成的。但是,这些区域通常被噪声包围,这可能会难以选择分类器。这个事实使大多数动态选择系统的性能都没有比静态选择好。在本文中,我们证明了动态选择系统的性能最终受到提取区域质量的限制。此后,我们提出了一种新的动态分类器选择系统,该系统可以改进胜任力区域,以实现更高的识别率。从多个分类数据库中获得的结果表明,该方法不仅可以显着提高识别性能,而且可以降低计算量。

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