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Rademacher Complexity Bounds for a Penalized Multi-class Semi-supervised Algorithm

机译:Rademacher复杂性界限为惩罚多级半监督算法

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摘要

We propose Rademacher complexity bounds for multi-class classifiers trained with a two-step semi-supervised model. In the first step, the algorithm partitions the partially labeled data and then identifies dense clusters containing kappa predominant classes using the labeled training examples such that the proportion of their non-predominant classes is below a fixed threshold stands for clustering consistency. In the second step, a classifier is trained by minimizing a margin empirical loss over the labeled training set and a penalization term measuring the disability of the learner to predict the kappa predominant classes of the identified clusters. The resulting data-dependent generalization error bound involves the margin distribution of the classifier, the stability of the clustering technique used in the first step and Rademacher complexity terms corresponding to partially labeled training data. Our theoretical result exhibit convergence rates extending those proposed in the literature for the binary case, and experimental results on different multi-class classification problems show empirical evidence that supports the theory.
机译:我们提出了用两步半监督模型训练的多级分类器的Radimacher复杂性界限。在第一步中,算法将部分标记的数据分区,然后使用标记的训练示例识别包含kappa主要类的密集簇,使得其非主要类的比例低于固定阈值,用于聚类一致性。在第二步中,通过最小化标记的训练集的边缘经验损失以及测量学习者的残疾来预测所识别的集群的Kappa主要类来训练分类器。由此产生的数据依赖的泛化误差绑定涉及分类器的边距分布,第一步中使用的聚类技术的稳定性和对应于部分标记的训练数据的Rademacher复杂性术语。我们的理论结果表明,延长了在文献中提出的二进制案件中提出的收敛率,以及不同多级分类问题的实验结果显示了支持该理论的经验证据。

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