Robustness of Graph Neural Networks
Offered By: IEEE Signal Processing Society via YouTube
Course Description
Overview
Explore the robustness of Graph Neural Networks in this 56-minute webinar presented by Stephan Gunnemann from Technical University of Munich. Delve into improving robustness techniques, analyze nonadaptive attacks, and understand robustness certificates. Examine whitebox and graybox certificates, graph models, and collective reasoning. Part of the Data sciEnce on GrAphS (DEGAS) Webinar Series, this presentation offers valuable insights for researchers and practitioners in the field of graph-based machine learning and signal processing.
Syllabus
Introduction
Background
Improving Robustness
Does this simple change work
Nonadaptive attacks
Intermediate message
Robustness certificates
Whitebox certificates
Graph models
Graybox certificates
Collective reasoning
Summary
Taught by
IEEE Signal Processing Society
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