Adaptive Neural Message Passing for Inductive Learning on Hypergraphs.

Devanshu Arya, Deepak K Gupta, Stevan Rudinac, Marcel Worring
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Abstract

Graphs are the most ubiquitous data structures for representing relational datasets and performing inferences in them. They model, however, only pairwise relations between nodes and are not designed for encoding the higher-order relations. This drawback is mitigated by hypergraphs, in which an edge can connect an arbitrary number of nodes. Most hypergraph learning approaches convert the hypergraph structure to that of a graph and then deploy existing geometric deep learning methods. This transformation leads to information loss, and sub-optimal exploitation of the hypergraph's expressive power. We present HyperMSG, a novel hypergraph learning framework that uses a modular two-level neural message passing strategy to accurately and efficiently propagate information within each hyperedge and across the hyperedges. HyperMSG adapts to the data and task by learning an attention weight associated with each node's degree centrality. Such a mechanism quantifies both local and global importance of a node, capturing the structural properties of a hypergraph. HyperMSG is inductive, allowing inference on previously unseen nodes. Further, it is robust and outperforms state-of-the-art hypergraph learning methods on a wide range of tasks and datasets. Finally, we demonstrate the effectiveness of HyperMSG in learning multimodal relations through detailed experimentation on a challenging multimedia dataset.

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超图上归纳学习的自适应神经信息传递
图是表示关系数据集和在其中进行推理的最普遍的数据结构。然而,它们只能模拟节点之间的成对关系,而不是为编码高阶关系而设计的。超图可以缓解这一缺陷,超图中的一条边可以连接任意数量的节点。大多数超图学习方法都是将超图结构转换为图结构,然后采用现有的几何深度学习方法。这种转换会导致信息丢失,并使超图的表现力得不到最佳利用。我们提出的 HyperMSG 是一种新颖的超图学习框架,它使用模块化的两级神经信息传递策略,在每个超边内和超边之间准确高效地传播信息。HyperMSG 通过学习与每个节点的度中心相关的注意力权重来适应数据和任务。这种机制可以量化节点的局部和全局重要性,从而捕捉到超图的结构特性。HyperMSG 具有归纳性,允许对以前未见过的节点进行推理。此外,它还具有很强的鲁棒性,在各种任务和数据集上都优于最先进的超图学习方法。最后,我们通过在一个具有挑战性的多媒体数据集上进行详细实验,证明了 HyperMSG 在学习多模态关系方面的有效性。
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