Temporal Graph Networks
TL;DR Many real-world problems involving networks of transactions of various nature and social interactions and engagements are dynamic and can be modelled as graphs where nodes and edges appear over time. In this post, we describe Temporal Graph Network, a generic framework for deep learning on dynamic graphs. This post was co-authored with Emanuele Rossi. Graph neural networks (GNNs) research has surged to become one of the hottest topics in machine learning this year. GNNs have seen a series of recent successes in problems from the fields of biology, chemistry, social science, physics, and many others.
Sep-15-2020, 00:50:37 GMT
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