Parameterized Pseudo-Differential Operators for Graph Convolutional Neural Networks

Published: Oct 1, 2021
Abstract
We present a novel graph convolutional layer that is conceptually simple, fast, and provides high accuracy with reduced overfitting. Based on pseudo-differential operators, our layer operates on graphs with relative position information available for each pair of connected nodes. Our layer represents a generalization of parameterized differential operators (previously shown effective for shape correspondence, image segmentation, and...
Paper Details
Title
Parameterized Pseudo-Differential Operators for Graph Convolutional Neural Networks
Published Date
Oct 1, 2021
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