ICML2024

On dimensionality of feature vectors in MPNNs

César Bravo, Alexander Kozachinskiy, Cristobal Rojas

被引用 8 次

摘要

We revisit the classical result of Morris et al. (AAAI'19) that message-passing graphs neural networks (MPNNs) are equal in their distinguishing power to the Weisfeiler--Leman (WL) isomorphism test. Morris et al. show their simulation result with ReLU activation function and O(n)O(n)-dimensional feature vectors, where nn is the number of nodes of the graph. By introducing randomness into the architecture, Aamand et al. (NeurIPS'22) were able to improve this bound to O(logn)O(\log n)-dimensional feature vectors, again for ReLU activation, although at the expense of guaranteeing perfect simulation only with high probability. Recently, Amir et al. (NeurIPS'23) have shown that for any non-polynomial analytic activation function, it is enough to use just 1-dimensional feature vectors. In this paper, we give a simple proof of the result of Amit et al. and provide an independent experimental validation of it.