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Graph topology inference based on transform learning

机译:基于变换学习的图拓扑推理

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The association of a graph representation to large datasets is one of key steps in graph-based learning methods. The aim of this paper is to propose an efficient strategy for learning the graph topology from signals defined over the vertices of a graph, under a signal band-limited (either exactly or only approximately so) assumption, which corresponds to signals having clustering properties. The proposed method is composed of two optimization steps. The first step consists in learning, jointly, the sparsifying orthonormal transform and the graph signal from the observed data. The solution of this joint problem is achieved through an iterative algorithm whose alternating intermediate solutions are expressed in closed form. The second step recovers the Laplacian matrix, and then the topology, from the knowledge of the sparsifying transform, through a convex optimization strategy which admits an efficient solution.
机译:图表示与大型数据集的关联是基于图的学​​习方法中的关键步骤之一。本文的目的是提出一种有效的策略,用于在信号带限(准确或近似如此)的假设下,从在图的顶点上定义的信号中学习图拓扑,该假设对应于具有聚类特性的信号。所提出的方法包括两个优化步骤。第一步是从观察到的数据中共同学习稀疏正交变换和图形信号。该联合问题的解决方案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,通过稀疏变换的知识,通过凸优化策略(允许有效的解决方案),恢复拉普拉斯矩阵,然后恢复拓扑。

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