Graphs are generic models of signal structure that can help to learn in several practical problems. To learn from graph data, we need scalable architectures that can be trained on moderate dataset sizes and that can be implemented in a distributed manner. Drawing from graph signal processing, the webinar will define graph convolutions and use them to introduce graph neural networks (GNNs). It will prove that GNNs are permutation equivariant and stable to perturbations of the graph, properties th
IEEE-Affiliated Group Name: The IEEE Signal Processing Society
URL: https://rc.signalprocessingsociety.org/education/webinars/SPSWEB2104.html