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arXiv 提交日期: 2026-02-03
📄 Abstract - Data-Driven Graph Filters via Adaptive Spectral Shaping

We introduce Adaptive Spectral Shaping, a data-driven framework for graph filtering that learns a reusable baseline spectral kernel and modulates it with a small set of Gaussian factors. The resulting multi-peak, multi-scale responses allocate energy to heterogeneous regions of the Laplacian spectrum while remaining interpretable via explicit centers and bandwidths. To scale, we implement filters with Chebyshev polynomial expansions, avoiding eigendecompositions. We further propose Transferable Adaptive Spectral Shaping (TASS): the baseline kernel is learned on source graphs and, on a target graph, kept fixed while only the shaping parameters are adapted, enabling few-shot transfer under matched compute. Across controlled synthetic benchmarks spanning graph families and signal regimes, Adaptive Spectral Shaping reduces reconstruction error relative to fixed-prototype wavelets and learned linear banks, and TASS yields consistent positive transfer. The framework provides compact spectral modules that plug into graph signal processing pipelines and graph neural networks, combining scalability, interpretability, and cross-graph generalization.

顶级标签: machine learning systems theory
详细标签: graph signal processing spectral kernels transfer learning chebyshev polynomials graph neural networks 或 搜索:

基于自适应频谱整形的数据驱动图滤波器 / Data-Driven Graph Filters via Adaptive Spectral Shaping


1️⃣ 一句话总结

这篇论文提出了一种名为‘自适应频谱整形’的新方法,它能像智能调音师一样,根据数据自动调整图滤波器在频谱上的响应,不仅效果好、易于理解,还能把在一个图上学到的核心知识快速迁移到其他图上使用,大大节省了计算成本。

源自 arXiv: 2602.03698