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Label propagation classification based on semi-supervised affinity propagation algorithm

机译:基于半监督亲和力传播算法的标签传播分类

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Different position of labeled samples will bring about diverse results of Label Propagation (LP) classification algorithm. Labeled samples which are in the border region of class tend to decrease the effectiveness of LP. This paper proposes an improved LP classification method based on semi-supervised affinity propagation (AP) algorithm named as AP-LP. AP-LP runs clustering through semi-supervised AP firstly, and propagates labels of exemplars instead of labeled samples based on LP, finally transmits labels of exemplars to unlabeled samples in each cluster. LP classification does well in the case of the sampling distribution with both local consistency and global consistency. The algorithm analysis and experimental results show that the performance of AP-LP classification method is superior to LP as a whole.
机译:标记样品的不同位置将带来标记传播(LP)分类算法的不同结果。在类别的边界区域中的标记样本往往会降低LP的有效性。提出了一种基于半监督亲和力传播算法的改进的LP分类方法,称为AP-LP。 AP-LP首先通过半监督AP进行聚类,然后传播样本的标签而不是基于LP的标记样本,最后将样本的标签传输到每个聚类中的未标记样本。在具有本地一致性和全局一致性的采样分布的情况下,LP分类效果很好。算法分析和实验结果表明,AP-LP分类方法的性能总体上优于LP。

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