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Graph Topology Inference Based on Sparsifying Transform Learning

机译:基于稀疏变换学习的图拓扑推理

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Graph-based representations play a key role in machine learning. The fundamental step in these representations is the association of a graph structure to a dataset. In this paper, we propose a method that finds a block sparse representation of the data by associating a graph, whose Laplacian matrix admits the sparsifying dictionary as its eigenvectors. The main idea is to associate a graph topology to the data in order to make the observed signals band-limited over the inferred graph. The proposed strategy is composed of the following two optimization steps: first, learning an orthonormal sparsifying transform from the data; and second, recovering the Laplacian matrix, and then topology, from the transform. The first step is achieved through an iterative algorithm whose alternating intermediate solutions are expressed in closed form. The second step recovers the Laplacian matrix from the sparsifying transform through a convex optimization method. Numerical results corroborate the effectiveness of the proposed methods over both synthetic and real data. Specifically, we consider two real-world applications of our methods: the inference of the brain functional activity map from electrocorticography signals taken from patients affected by epilepsy, and the reconstruction of the radio environment map from sparse measurements of the electromagnetic field in an urban area.
机译:基于图的表示在机器学习中起着关键作用。这些表示的基本步骤是将图结构与数据集关联。在本文中,我们提出了一种通过关联图来查找数据的块稀疏表示的方法,该图的拉普拉斯矩阵将稀疏字典作为其特征向量。主要思想是将图拓扑与数据相关联,以使观察到的信号在推断的图上具有带宽限制。所提出的策略由以下两个优化步骤组成:首先,从数据中学习正交稀疏变换。其次,从变换中恢复拉普拉斯矩阵,然后恢复拓扑。第一步是通过迭代算法实现的,该算法的交替中间解决方案以闭合形式表示。第二步通过凸优化方法从稀疏变换中恢复拉普拉斯矩阵。数值结果证实了所提方法在合成和真实数据上的有效性。具体来说,我们考虑了我们方法的两种实际应用:从癫痫患者的脑皮层电信号推断大脑功能活动图,以及从市区中电磁场的稀疏测量重建无线电环境图。

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