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Unsupervised multi-view feature extraction with dynamic graph learning

机译:动态图学习的无监督多视图特征提取

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摘要

Graph-based multi-view feature extraction has attracted much attention in literature. However, conventional solutions generally rely on a manually defined affinity graph matrix, which is hard to capture the intrinsic sample relations in multiple views. In addition, the graph construction and feature extraction are separated into two independent processes which may result in sub-optimal results. Furthermore, the raw data may contain adverse noises that reduces the reliability of the affinity matrix. In this paper, we propose a novel Unsupervised Multi-view Feature Extraction with Dynamic Graph Learning (UMFE-DGL) to solve these limitations. We devise a unified learning framework which simultaneously performs dynamic graph learning and the feature extraction. Dynamic graph learning adaptively captures the intrinsic multiple view-specific relations of samples. Feature extraction learns the projection matrix that could accordingly preserve the dynamically adjusted sample relations modelled by graph into the low-dimensional features. Experimental results on several public datasets demonstrate the superior performance of the proposed approach, compared with state-of-the-art techniques. (C) 2018 Elsevier Inc. All rights reserved.
机译:基于图的多视图特征提取在文献中引起了很多关注。然而,常规解决方案通常依赖于手动定义的亲和度图矩阵,这很难捕获多个视图中的固有样本关系。此外,图的构建和特征提取被分为两个独立的过程,这可能会导致次优结果。此外,原始数据可能包含不利噪声,从而降低了亲和矩阵的可靠性。在本文中,我们提出了一种新颖的带有动态图学习的无监督多视图特征提取(UMFE-DGL),以解决这些局限性。我们设计了一个统一的学习框架,该框架同时执行动态图学习和特征提取。动态图学习自适应地捕获样本的固有多视图特定关系。特征提取学习投影矩阵,该投影矩阵可以相应地将通过图建模的动态调整的样本关系保留到低维特征中。与最新技术相比,在多个公共数据集上的实验结果证明了该方法的优越性能。 (C)2018 Elsevier Inc.保留所有权利。

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