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Label propagation with structured graph learning for semi-supervised dimension reduction

机译:标签传播与结构化图学习,用于半监督尺寸减少

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摘要

Graph learning has been demonstrated as one of the most effective methods for semi-supervised dimension reduction, as it can achieve label propagation between labeled and unlabeled samples to improve the feature projection performance. However, most existing methods perform this important label propagation process on the graph with sub-optimal structure, which will reduce the quality of the learned labels and thus affect the subsequent dimension reduction. To alleviate this problem, in this paper, we propose an effective Label Propagation with Structured Graph Learning (LPSGL) method for semi-supervised dimension reduction. In our model, label propagation, semi-supervised structured graph learning and dimension reduction are simultaneously performed in a unified learning framework. We propose a semi-supervised structured graph learning method to characterize the intrinsic semantic relations of samples more accurately. Further, we assign different importance scores for the given and learned labeled samples to differentiate their effects on learning the feature projection matrix. In our method, the semantic information can be propagated more effectively from labeled samples to the unlabeled samples on the learned structured graph. And a more discriminative feature projection matrix can be learned to perform the dimension reduction. An iterative optimization with the proved convergence is proposed to solve the formulated learning framework. Experiments demonstrate the state-of-the-art performance of the proposed method. (C) 2021 Elsevier B.V. All rights reserved.
机译:图表学习已被证明为半监督尺寸减少的最有效方法之一,因为它可以在标记和未标记的样本之间实现标签传播以改善特征投影性能。然而,大多数现有方法在具有次优结构的图表上对图表执行这一重要标签传播过程,这将降低所学习标签的质量,从而影响随后的尺寸减小。为了减轻这个问题,在本文中,我们提出了一种与结构化图学习(LPSGL)方法的有效标签传播,用于半监督尺寸减少。在我们的模型中,标签传播,半监督结构图学习和尺寸减少同时在统一的学习框架中执行。我们提出了一种半监督的结构图学习方法,以更准确地表征样品的内在语义关系。此外,我们为给定的标记样本分配了不同的重要分数,以区分其对学习特征投影矩阵的影响。在我们的方法中,语义信息可以从标记的样本更有效地传播到学习结构图上的未标记的样本。可以学习更辨别的特征投影矩阵以执行尺寸减小。提出了一种迭代优化,以解决配交的学习框架。实验证明了所提出的方法的最先进的性能。 (c)2021 elestvier b.v.保留所有权利。

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