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Evidential Joint Calibration of Binary SVM Classifiers Using Logistic Regression

机译:使用Logistic回归的二值SVM分类器证据联合校准

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摘要

In a context of multiple classifiers, a calibration step based on logistic regression is usually used to independently transform each classifier output into a probability distribution, to be then able to combine them. This calibration has been recently refined, using the evidence theory, to better handle uncertainties. In this paper, we propose to use this logistic-based calibration in a multivariable scenario, i.e., to consider jointly all the outputs returned by the classifiers, and to extend this approach to the evidential framework. Our evidential approach was tested on generated and real datasets and presents several advantages over the probabilistic version.
机译:在多个分类器的上下文中,通常使用基于逻辑回归的校准步骤将每个分类器的输出独立地转换为概率分布,以便随后将它们组合在一起。最近使用证据理论对校准进行了改进,以更好地处理不确定性。在本文中,我们建议在多变量场景中使用基于逻辑的校准,即共同考虑分类器返回的所有输出,并将这种方法扩展到证据框架。我们的证据方法在生成的数据集和真实数据集上进行了测试,与概率版本相比,具有一些优势。

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