The construction of a meaningful hypergraph topology is the key to processing signals with high-order relationships that involve more than two entities. Learning the hypergraph structure from the observed signals to capture the intrinsic relationships among the entities becomes crucial when a hypergraph topology is not readily available in the datasets. There are two challenges that lie at the heart of this problem: 1) how to handle the huge search space of potential hyperedges, and 2) how to define meaningful criteria to measure the relationship between the signals observed on nodes and the hypergraph structure. In this paper, to address the first challenge, we adopt the assumption that the ideal hypergraph structure can be derived from a learnable graph structure that captures the pairwise relations within signals. Further, we propose a hypergraph learning framework with a novel dual smoothness prior that reveals a mapping between the observed node signals and the hypergraph structure, whereby each hyperedge corresponds to a subgraph with both node signal smoothness and edge signal smoothness in the learnable graph structure. Finally, we conduct extensive experiments to evaluate the proposed framework on both synthetic and real world datasets. Experiments show that our proposed framework can efficiently infer meaningful hypergraph topologies from observed signals.
翻译:构建一个有意义的高空地形学是处理涉及两个以上实体的高级关系信号的关键。 从观测到的信号中学习高空结构,以捕捉各实体之间的内在关系。 当数据集中无法随时提供高空地形学时,从观察到的信号中学习高空结构就变得至关重要。 这个问题的核心有两个挑战:(1) 如何处理潜在高端信号的巨大搜索空间,和(2) 如何界定有意义的标准,以衡量在节点和高空结构上观察到的信号之间的关系。 在本文中,为了应对第一个挑战,我们采用了一个假设,即理想的高空结构可以从一个可学习的图表结构中衍生出来,该结构可以捕捉到信号中的对称关系。 此外,我们提议了一个具有新颖双光性的高空高空学习框架,显示所观测到的点信号和高空结构之间的映射图图图,每个高空空间都与一个子绘图相匹配,两者都有节点信号的光滑和边缘信号。 最后,我们进行了广泛的实验,以评价所观测到的合成和真实世界数据集的拟议框架。 实验表明,我们提议的框架能够有效地从所观测到的有意义的高空图信号中推断出有意义的高空图。