Heterogeneous Sheaf Neural Networks

Luke Braithwaite, Iulia Duta, Pietro Liò
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Abstract

Heterogeneous graphs, with nodes and edges of different types, are commonly used to model relational structures in many real-world applications. Standard Graph Neural Networks (GNNs) struggle to process heterogeneous data due to oversmoothing. Instead, current approaches have focused on accounting for the heterogeneity in the model architecture, leading to increasingly complex models. Inspired by recent work, we propose using cellular sheaves to model the heterogeneity in the graph's underlying topology. Instead of modelling the data as a graph, we represent it as cellular sheaves, which allows us to encode the different data types directly in the data structure, eliminating the need to inject them into the architecture. We introduce HetSheaf, a general framework for heterogeneous sheaf neural networks, and a series of heterogeneous sheaf predictors to better encode the data's heterogeneity into the sheaf structure. Finally, we empirically evaluate HetSheaf on several standard heterogeneous graph benchmarks, achieving competitive results whilst being more parameter-efficient.
异构片状神经网络
在许多实际应用中,具有不同类型节点和边的异构图通常被用来模拟关系结构。由于过度平滑,标准图神经网络(GNN)难以处理异构数据。相反,当前的方法侧重于在模型架构中考虑异质性,从而导致模型越来越复杂。受近期工作的启发,我们提议使用蜂窝剪切来模拟图的底层拓扑中的异质性。我们不再将数据建模为图,而是将其表示为蜂窝切弗,这样我们就可以直接在数据结构中编码不同的数据类型,而无需将它们注入到架构中。最后,我们在几个标准异构图基准上对 HetSheaf 进行了实证评估,在获得具有竞争力的结果的同时,还提高了参数效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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