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A non-parametric approach to extending generic binary classifiers for multi-classification

机译:扩展通用二进制分类器以进行多分类的非参数方法

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Ensemble methods, which combine generic binary classifier scores to generate a multi-classification output, are commonly used in state-of-the-art computer vision and pattern recognition systems that rely on multi-classification. In particular, we consider the one-vs-one decomposition of the multi-class problem, where binary classifier models are trained to discriminate every class pair. We describe a robust multi-classification pipeline, which at a high level involves projecting binary classifier scores into compact orthogonal subspaces, followed by a non-linear probabilistic multi-classification step, using Kernel Density Estimation (KDE). We compare our approach against state-of-the-art ensemble methods (DCS, DRCW) on 16 multi-class datasets. We also compare against the most commonly used ensemble methods (VOTE, NEST) on 6 real-world computer vision datasets. Finally, we measure the statistical significance of our approach using non-parametric tests. Experimental results show that our approach gives a statistically significant improvement in multi-classification performance over state-of-the-art. (C) 2016 Elsevier Ltd. All rights reserved.
机译:集成了通用二进制分类器分数以生成多分类输出的集成方法,通常在依赖于多分类的最新计算机视觉和模式识别系统中使用。特别是,我们考虑了多类问题的一对一分解,其中训练了二进制分类器模型以区分每个类对。我们描述了一个健壮的多分类流水线,该流水线涉及将二进制分类器分数投影到紧凑的正交子空间中,然后使用核密度估计(KDE)进行非线性概率多分类步骤。我们将我们的方法与16种多类数据集上的最新集成方法(DCS,DRCW)进行了比较。我们还与6个现实世界的计算机视觉数据集上最常用的集成方法(VOTE,NEST)进行了比较。最后,我们使用非参数检验来衡量我们方法的统计显着性。实验结果表明,相对于最新技术,我们的方法在多分类性能方面具有统计学上的显着提高。 (C)2016 Elsevier Ltd.保留所有权利。

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