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arXiv 提交日期: 2026-06-24
📄 Abstract - Communicability-Inspired Positional Encoding (CIPE)

Positional encodings (PEs) are essential for Transformers. Yet designing effective PEs for non-Euclidean graphs remains challenging. Such encodings should ideally induce an Attention-Compatible Geometry for self-attention: not merely describing graph structure, but defining a geometry whose inner products reflect meaningful structural relatedness. To realize this geometry, we propose Communicability-Inspired Positional Encoding (CIPE), built from communicability, a measure between pairs of nodes that aggregates contributions from paths of all lengths. By construction, CIPE inner products recover communicability, converting global multi-path connectivity into an attention-ready similarity geometry. For practical Transformer training, we introduce dimensionality alignment, mapping graph-size-dependent CIPE representations to prescribed dimensions while faithfully preserving the induced geometry. Empirically, CIPE improves structure-agnostic Transformers by 35.5% on average across seven benchmarks, outperforming representative PEs; it also consistently improves structure-biased graph Transformers, where competing PEs often yield only marginal benefits. These results position CIPE as a principled framework for attention-compatible graph positional encodings.

顶级标签: machine learning theory
详细标签: positional encoding graph transformers communicability attention-compatible geometry dimensionality alignment 或 搜索:

基于通信性的位置编码(CIPE) / Communicability-Inspired Positional Encoding (CIPE)


1️⃣ 一句话总结

本文提出了一种名为CIPE的新型图位置编码方法,通过利用节点间所有路径信息的总和(即通信性)来构建与自注意力机制兼容的几何表示,从而显著提升了图神经网络在多个基准任务上的性能,平均提升达35.5%。

源自 arXiv: 2606.25293