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graph machine learning
Towards Structured Intelligence with Deep Graph Neural Networks
Guohao Li, Ph.D., Computer Science
Oct 5, 18:00
-
20:00
B5 L5 R5209
graph machine learning
Graph Neural Networks
This dissertation discusses approaches to building large-scale and efficient graph machine learning models for learning structured representation with applications to engineering and sciences. This work would present how to make Graph Neural Networks (GNNs) go deep by introducing architectural designs and how to automatically search GNN architectures by novel neural architecture search algorithms.