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PAC-Bayesian Generalization Bound on Confusion Matrix for Multi-Class Classification

机译:Pac-Bayesian泛化界定了多级分类的混淆矩阵

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In this paper, we propose a PAC-Bayes bound for the generalization risk of the Gibbs classifier in the multi-class classification framework. The novelty of our work is the critical use of the confusion matrix of a classifier as an error measure; this puts our contribution in the line of work aiming at dealing with performance measure that are richer than mere scalar criterion such as the misclassification rate. Thanks to very recent and beautiful results on matrix concentration inequalities, we derive two bounds showing that the true confusion risk of the Gibbs classifier is upper-bounded by its empirical risk plus a term depending on the number of training examples in each class. To the best of our knowledge, this is the first PAC-Bayes bounds based on confusion matrices.
机译:在本文中,我们提出了一种PAC-BAYES,涉及多级分类框架中GIBBS分类器的泛化风险。我们的工作的新颖性是分类器的混淆矩阵作为错误测量的关键用法;这在旨在处理绩效措施的旨在比仅仅是错误分类率,旨在更丰富的绩效措施的工作中的贡献。由于近期和美丽的矩阵浓度不平等结果,我们推出了两个界限,表明Gibbs分类器的真正混乱风险是由其经验风险的大约义,具体取决于每个班级的训练示例的数量。据我们所知,这是基于混乱矩阵的第一个PAC-Bayes界限。

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