cs.AI updates on arXiv.org 10月14日 12:19
图异质性与自适应滤波在GNN中的应用
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本文提出了一种新的图神经网络(GNN)方法,用于处理图异质性问题。该方法通过自适应滤波技术,解决了图异质性与谱滤波之间的复杂关系,在异质图和同质图上均取得了优于现有方法的性能。

arXiv:2510.10864v1 Announce Type: cross Abstract: Graph heterophily, where connected nodes have different labels, has attracted significant interest recently. Most existing works adopt a simplified approach - using low-pass filters for homophilic graphs and high-pass filters for heterophilic graphs. However, we discover that the relationship between graph heterophily and spectral filters is more complex - the optimal filter response varies across frequency components and does not follow a strict monotonic correlation with heterophily degree. This finding challenges conventional fixed filter designs and suggests the need for adaptive filtering to preserve expressiveness in graph embeddings. Formally, natural questions arise: Given a heterophilic graph G, how and to what extent will the varying heterophily degree of G affect the performance of GNNs? How can we design adaptive filters to fit those varying heterophilic connections? Our theoretical analysis reveals that the average frequency response of GNNs and graph heterophily degree do not follow a strict monotonic correlation, necessitating adaptive graph filters to guarantee good generalization performance. Hence, we propose [METHOD NAME], a simple yet powerful GNN, which extracts information across the heterophily spectrum and combines salient representations through adaptive mixing. [METHOD NAME]'s superior performance achieves up to 9.2% accuracy improvement over leading baselines across homophilic and heterophilic graphs.

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图神经网络 图异质性 自适应滤波 GNN 性能提升
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