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Joint Sparse Representation and Embedding Propagation Learning: A Framework for Graph-Based Semisupervised Learning

机译:联合稀疏表示和嵌入传播学习:基于图的半监督学习框架

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摘要

In this paper, we propose a novel graph-based semisupervised learning framework, called joint sparse representation and embedding propagation learning (JSREPL). The idea of JSREPL is to join EPL with sparse representation to perform label propagation. Like most of graph-based semisupervised propagation learning algorithms, JSREPL also constructs weights graph matrix from given data. Different from classical approaches which build weights graph matrix and estimate the labels of unlabeled data in sequence, JSREPL simultaneously builds weights graph matrix and estimates the labels of unlabeled data. We also propose an efficient algorithm to solve the proposed problem. The proposed method is applied to the problem of semisupervised image clustering using the ORL, Yale, PIE, and YaleB data sets. Our experiments demonstrate the effectiveness of our proposed algorithm.
机译:在本文中,我们提出了一种新颖的基于图的半监督学习框架,称为联合稀疏表示和嵌入传播学习(JSREPL)。 JSREPL的想法是将EPL与稀疏表示形式结合起来以执行标签传播。像大多数基于图的半监督传播学习算法一样,JSREPL也从给定数据构造权重图矩阵。与传统的建立权重图矩阵并按顺序估计未标记数据标签的经典方法不同,JSREPL同时建立权重图矩阵并估计未标记数据的标签。我们还提出了一种有效的算法来解决所提出的问题。该方法适用于使用ORL,Yale,PIE和YaleB数据集的半监督图像聚类问题。我们的实验证明了我们提出的算法的有效性。

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