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arXiv 提交日期: 2026-06-23
📄 Abstract - A Framework for Directed Hypergraph Signal Processing via tensor t-SVD

We introduce Directed Hypergraph Signal Processing (DHGSP), a unified framework that extends graph signal processing to accommodate both higher-order (polyadic) and asymmetric (directional) relationships simultaneously. Using the tensor singular value decomposition (t-SVD) within the t-product algebra, we define a novel adjacency tensor for directed hypergraphs, a topologically faithful shift operator, and a lossless Directed Hypergraph Fourier Transform (t-DHGFT). Experiments on real traffic networks demonstrate that DHGSP outperforms matrix-based (graph and digraph) and undirected tensor-based (hypergraph) baselines in denoising tasks.

顶级标签: systems theory
详细标签: hypergraph tensor svd graph signal processing directed hypergraph fourier transform 或 搜索:

基于张量t-SVD的有向超图信号处理框架 / A Framework for Directed Hypergraph Signal Processing via tensor t-SVD


1️⃣ 一句话总结

本文提出了一种名为有向超图信号处理(DHGSP)的统一框架,利用张量t-SVD技术同时处理数据中的高阶关系(如多人互动)和有向关系(如信息传递方向),并在真实交通网络数据上证明其在去噪任务中优于传统基于图、有向图或无向超图的方法。

源自 arXiv: 2606.25112