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Low rank approximation with sparse integration of multiple manifolds for data representation

机译:低秩近似,稀疏集成多个流形,用于数据表示

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摘要

Manifold regularized techniques have been extensively exploited in unsupervised learning like matrix factorization whose performance is heavily affected by the underlying graph regularization. However, there exist no principled ways to select reasonable graphs under the matrix decomposition setting, particularly in multiple heterogeneous graph sources. In this paper, we deal with the issue of searching for the optimal linear combination space of multiple graphs under the low rank matrix approximation model. Specifically, efficient projection onto the probabilistic simplex is utilized to optimize the coefficient vector of graphs, resulting in the sparse pattern of coefficients. This attractive property of sparsity can be interpreted as a criterion for selecting graphs, i.e., identifying the most discriminative graphs and removing the noisy or irrelevant graphs, so as to boost the low rank decomposition performance. Experimental results over diverse popular image and web document corpora corroborate the effectiveness of our new model in terms of clusterings.
机译:流形正则化技术已在诸如矩阵分解的无监督学习中得到了广泛利用,其性能受基础图正则化的影响很大。但是,没有在矩阵分解设置下选择合理图的原则方法,尤其是在多个异构图源中。在本文中,我们处理了在低秩矩阵逼近模型下寻找多个图的最佳线性组合空间的问题。具体地,有效地投影到概率单纯形上用于优化图的系数向量,从而导致系数的稀疏模式。稀疏性的这种吸引人的性质可以解释为选择图的标准,即,识别最有区别的图并去除噪声或无关的图,从而提高低秩分解性能。在各种流行图像和Web文档语料库上的实验结果证实了我们的新模型在聚类方面的有效性。

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