Dynamic ensemble selection VS K-NN: Why and when dynamic selection obtains higher classification performance?

Rafael M. O. Cruz, Hiba H. Zakane, R. Sabourin, George D. C. Cavalcanti
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引用次数: 21

Abstract

Multiple classifier systems focus on the combination of classifiers to obtain better performance than a single robust one. These systems unfold three major phases: pool generation, selection and integration. One of the most promising MCS approaches is Dynamic Selection (DS), which relies on finding the most competent classifier or ensemble of classifiers to predict each test sample. The majority of the DS techniques are based on the K-Nearest Neighbors (K-NN) definition, and the quality of the neighborhood has a huge impact on the performance of DS methods. In this paper, we perform an analysis comparing the classification results of DS techniques and the K-NN classifier under different conditions. Experiments are performed on 18 state-of-the-art DS techniques over 30 classification datasets and results show that DS methods present a significant boost in classification accuracy even though they use the same neighborhood as the K-NN. The reasons behind the outperformance of DS techniques over the K-NN classifier reside in the fact that DS techniques can deal with samples with a high degree of instance hardness (samples that are located close to the decision border) as opposed to the K-NN. In this paper, not only we explain why DS techniques achieve higher classification performance than the K-NN but also when DS should be used.
动态集成选择VS K-NN:动态选择为何以及何时获得更高的分类性能?
多分类器系统关注于分类器的组合,以获得比单个分类器更好的性能。这些系统展开了三个主要阶段:池的产生、选择和整合。最有前途的MCS方法之一是动态选择(DS),它依赖于找到最胜任的分类器或分类器集合来预测每个测试样本。大多数DS技术都是基于k近邻(K-NN)定义的,邻域的质量对DS方法的性能有很大的影响。在本文中,我们对DS技术和K-NN分类器在不同条件下的分类结果进行了分析比较。在30个分类数据集上对18种最先进的DS技术进行了实验,结果表明,即使DS方法使用与K-NN相同的邻域,DS方法也能显著提高分类精度。DS技术优于K-NN分类器的原因在于,与K-NN相比,DS技术可以处理具有高度实例硬度的样本(位于决策边界附近的样本)。在本文中,我们不仅解释了为什么DS技术比K-NN具有更高的分类性能,而且还解释了在什么情况下应该使用DS。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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