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A weakly-supervised factorization method with dynamic graph embedding

机译:具有动态图形嵌入的弱监督分解方法

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摘要

Nonnegative matrix factorization (NMF) is an effective method to learn a vigorous representation of nonnegative data and has been successfully applied in different machine learning tasks. Using NMF in semi-supervised classification problems, its factors are the label matrix and the membership values of data points. In this paper, a dynamic weakly supervised factorization is proposed to learn a classifier using NMF framework and partially supervised data. Also, a label propagation mechanism is used to initialize the label matrix factor of NMF. Besides a graph based method is used to dynamically update the partially labeled data in each iteration. This mechanism leads to enriching the supervised information in each iteration and consequently improves the classification performance. Several experiments were performed to evaluate the performance of the proposed method and the results show its superiority compared to a state-of-the-art method.
机译:非负矩阵分解(NMF)是学习非负数据的剧烈表示的有效方法,并已成功应用于不同的机器学习任务。在半监督分类问题中使用NMF,其因素是标签矩阵和数据点的成员资格值。在本文中,提出了一种使用NMF框架和部分监督数据来学习分类器的动态弱监管分类。此外,标签传播机制用于初始化NMF的标签矩阵因子。除了基于图形的方法之外,用于动态更新每次迭代中的部分标记的数据。该机制导致每次迭代中的监督信息丰富,从而提高了分类性能。进行了几个实验以评估所提出的方法的性能,结果表明其与最先进的方法相比其优越性。

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