This comprehensive survey delves into deep graph representation learning algorithms, focusing on graph convolutions. It discusses spectral and spatial graph convolutions, their techniques, challenges, limitations, and future prospects. The integration of graph kernels with neural networks is explored for enhanced performance in analyzing and representing graphs.
Graph convolution methods are categorized into spectral and spatial types. Spectral convolutions leverage Graph Signal Processing for theoretical interpretations, while spatial convolutions mimic Recurrent Graph Neural Networks for simplicity in computation. Challenges include over-smoothing in deep networks and reliance on graph construction methods.
The survey highlights the need for more powerful graph convolution techniques to address over-smoothing issues and emphasizes the potential impact of Graph Structure Learning (GSL) methodologies on enhancing the performance of graph convolutions.
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