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Renormalization Group as a principled way to avoid Oversquashing

23 March 2023
12:00 pm
San Francesco Complex - Cappella Guinigi

Graph Neural Networks have proven to struggle to model long-range interactions. In this scenario they are forced to "over-squash" information into fixed-size vectors. We borrow a newly proposed Renormalization Group for graphs in order to shorten the distances of the interactions. We as well argue that this procedure allows us to separate the information related to different scales of the graph.

 

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relatore: 
Francesco Caso, PhD Sapienza University of Rome
Units: 
SYSMA