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Hypergraph Spectral Learning for Multi-label Classification

机译:用于多标签分类的超图谱学习

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A hypergraph is a generalization of the traditional graph in which the edges are arbitrary non-empty subsets of the vertex set. It has been applied successfully to capture high-order relations in various domains. In this paper, we propose a hypergraph spectral learning formulation for multi-label classification, where a hypergraph is constructed to exploit the correlation information among different labels. We show that the proposed formulation leads to an eigenvalue problem, which may be computationally expensive especially for large-scale problems. To reduce the computational cost, we propose an approximate formulation, which is shown to be equivalent to a least squares problem under a mild condition. Based on the approximate formulation, efficient algorithms for solving least squares problems can be applied to scale the formulation to very large data sets. In addition, existing regularization techniques for least squares can be incorporated into the model for improved generalization performance. We have conducted experiments using large-scale benchmark data sets, and experimental results show that the proposed hypergraph spectral learning formulation is effective in capturing the high-order relations in multi-label problems. Results also indicate that the approximate formulation is much more efficient than the original one, while keeping competitive classification performance.
机译:超图是对传统图的概括,其中边是顶点集的任意非空子集。它已成功应用于捕获各个领域的高阶关系。在本文中,我们提出了一种用于多标签分类的超图光谱学习公式,其中构造了一个超图以利用不同标签之间的相关信息。我们表明,提出的公式会导致特征值问题,该问题在计算上可能非常昂贵,尤其是对于大规模问题。为了降低计算成本,我们提出了一个近似公式,该公式在温和条件下等效于最小二乘问题。基于近似公式,可以应用用于求解最小二乘问题的有效算法,将公式扩展到非常大的数据集。此外,可以将现有的最小二乘正则化技术并入模型中,以提高泛化性能。我们已经使用大型基准数据集进行了实验,实验结果表明,所提出的超图谱学习公式可以有效地捕获多标签问题中的高阶关系。结果还表明,近似公式比原始公式有效得多,同时保持了竞争性的分类性能。

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