Quasi-framelets: robust graph neural networks via adaptive framelet convolution
Mengxi Yang,
Dai Shi,
Xuebin Zheng
et al.
Abstract:This paper aims to provide a novel design of a multiscale framelet convolution for spectral graph neural networks (GNNs). While current spectral methods excel in various graph learning tasks, they often lack the flexibility to adapt to noisy, incomplete, or perturbed graph signals, making them fragile in such conditions. Our newly proposed framelet convolution addresses these limitations by decomposing graph data into low-pass and high-pass spectra through a finely-tuned multiscale approach. Our approach direc… Show more
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