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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Low-rank adaptive graph emb e dding for unsupervise d feature extraction
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Low-rank adaptive graph emb e dding for unsupervise d feature extraction

机译:低级别自适应图BEM E DDDIND for Unuvevise D功能提取

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摘要

Most of manifold learning based feature extraction methods are two-step methods, which first construct a weighted neighborhood graph and then use the pre-constructed graph to perform subspace learning. As a result, these methods fail to use the underlying correlation structure of data to learn an adaptive graph to preciously characterize the similarity relationship between samples. To address this problem, we propose a novel unsupervised feature extraction method called low-rank adaptive graph embedding (LRAGE), which can perform subspace learning and adaptive probabilistic neighborhood graph embedding simultaneously based on reconstruction error minimization. The proposed LRAGE is imposed with low-rank constraint for the sake of exploring the underlying correlation structure of data and learning more informative projection. Moreover, the L 2 , 1-norm penalty is imposed on the regularization to further enhance the robustness of LRAGE. Since the resulting objective function has no closed-form solutions, an iterative optimization algorithm is elaborately designed. The convergence of the proposed algorithm is proved and the corresponding computational complexity analysis is also presented. In addition, we explore the potential properties of the proposed LRAGE by comparing it with several similar models on both synthetic and real-world data sets. Extensive experiments on five well-known face data sets and three non-face data sets demonstrate the superiority of the proposed LRAGE. (c) 2020 Elsevier Ltd. All rights reserved.
机译:大多数基于流形学习的特征提取方法都是两步式的,首先构造一个加权邻域图,然后使用预先构造的图进行子空间学习。因此,这些方法无法利用数据的潜在相关性结构来学习自适应图,从而精确描述样本之间的相似关系。为了解决这个问题,我们提出了一种新的无监督特征提取方法,称为低秩自适应图嵌入(LRAGE),该方法可以在重构误差最小化的基础上同时进行子空间学习和自适应概率邻域图嵌入。为了探索数据的潜在相关性结构和学习更多信息的投影,所提出的LRAGE采用低秩约束。此外,还对正则化施加了L2,1-范数惩罚,以进一步增强LRAGE的鲁棒性。由于得到的目标函数没有闭式解,因此精心设计了一种迭代优化算法。证明了该算法的收敛性,并给出了相应的计算复杂度分析。此外,我们还通过在合成数据集和真实数据集上与几个类似模型进行比较,探索了所提出的LRAGE的潜在特性。在五个已知人脸数据集和三个非人脸数据集上进行的大量实验证明了该算法的优越性。(c) 2020爱思唯尔有限公司版权所有。

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