cs.AI updates on arXiv.org 08月20日
SVDformer: Direction-Aware Spectral Graph Embedding Learning via SVD and Transformer
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本文提出SVDformer,结合SVD和Transformer架构,解决现有图神经网络在方向语义和全局结构模式捕捉上的难题,显著提升节点分类任务性能。

arXiv:2508.13435v1 Announce Type: cross Abstract: Directed graphs are widely used to model asymmetric relationships in real-world systems. However, existing directed graph neural networks often struggle to jointly capture directional semantics and global structural patterns due to their isotropic aggregation mechanisms and localized filtering mechanisms. To address this limitation, this paper proposes SVDformer, a novel framework that synergizes SVD and Transformer architecture for direction-aware graph representation learning. SVDformer first refines singular value embeddings through multi-head self-attention, adaptively enhancing critical spectral components while suppressing high-frequency noise. This enables learnable low-pass/high-pass graph filtering without requiring spectral kernels. Furthermore, by treating singular vectors as directional projection bases and singular values as scaling factors, SVDformer uses the Transformer to model multi-scale interactions between incoming/outgoing edge patterns through attention weights, thereby explicitly preserving edge directionality during feature propagation. Extensive experiments on six directed graph benchmarks demonstrate that SVDformer consistently outperforms state-of-the-art GNNs and direction-aware baselines on node classification tasks, establishing a new paradigm for learning representations on directed graphs.

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SVDformer 图神经网络 方向感知学习 节点分类 Transformer
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