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Graph Neural Networks and Arithmetic Circuits

27 February 2024
Timon Barlag
Vivian Holzapfel
Laura Strieker
Jonni Virtema
H. Vollmer
    GNN
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Abstract

We characterize the computational power of neural networks that follow the graph neural network (GNN) architecture, not restricted to aggregate-combine GNNs or other particular types. We establish an exact correspondence between the expressivity of GNNs using diverse activation functions and arithmetic circuits over real numbers. In our results the activation function of the network becomes a gate type in the circuit. Our result holds for families of constant depth circuits and networks, both uniformly and non-uniformly, for all common activation functions.

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