Geometric Deep Learning: a Temperature Based Analysis of Graph Neural Networks

09/01/2023
by   M. Lapenna, et al.
0

We examine a Geometric Deep Learning model as a thermodynamic system treating the weights as non-quantum and non-relativistic particles. We employ the notion of temperature previously defined in [7] and study it in the various layers for GCN and GAT models. Potential future applications of our findings are discussed.

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