Unsupervised and semi-supervised learning via ℓ1-norm graph

F. Nie, Hua Wang, Heng Huang, C. Ding
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引用次数: 76

Abstract

In this paper, we propose a novel ℓ1-norm graph model to perform unsupervised and semi-supervised learning methods. Instead of minimizing the ℓ2-norm of spectral embedding as traditional graph based learning methods, our new graph learning model minimizes the ℓ1-norm of spectral embedding with well motivation. The sparsity produced by the ℓ1-norm minimization results in the solutions with much clearer cluster structures, which are suitable for both image clustering and classification tasks. We introduce a new efficient iterative algorithm to solve the ℓ1-norm of spectral embedding minimization problem, and prove the convergence of the algorithm. More specifically, our algorithm adaptively re-weight the original weights of graph to discover clearer cluster structure. Experimental results on both toy data and real image data sets show the effectiveness and advantages of our proposed method.
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基于1-范数图的无监督和半监督学习
在本文中,我们提出了一种新的1-范数图模型来执行无监督和半监督学习方法。与传统的基于图的学习方法最小化谱嵌入的l2范数不同,我们的新图学习模型在动机良好的情况下最小化谱嵌入的l2范数。由1范数最小化产生的稀疏性使得解具有更清晰的聚类结构,适合于图像聚类和分类任务。提出了一种新的求解谱嵌入最小化问题的高效迭代算法,并证明了该算法的收敛性。更具体地说,我们的算法自适应地对图的原始权值进行重新加权,以发现更清晰的聚类结构。在玩具数据和真实图像数据集上的实验结果表明了该方法的有效性和优越性。
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