Breaking the Limits of Message Passing Graph Neural Networks

被引:0
|
作者
Balcilar, Muhammet [1 ,2 ]
Heroux, Pierre [1 ]
Gauzere, Benoit [3 ]
Vasseur, Pascal [1 ,4 ]
Adam, Sebastien [1 ]
Honeine, Paul [1 ]
机构
[1] Univ Rouen Normandy, LITIS Lab, Mont St Aignan, France
[2] InterDigital, Rennes, France
[3] INSA Rouen Normandy, LITIS Lab, St Etienne Du Rouvray, France
[4] Univ Picardie Jules Verne, MIS Lab, Amiens, France
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中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Since the Message Passing (Graph) Neural Networks (MPNNs) have a linear complexity with respect to the number of nodes when applied to sparse graphs, they have been widely implemented and still raise a lot of interest even though their theoretical expressive power is limited to the first order Weisfeiler-Lehman test (1-WL). In this paper, we show that if the graph convolution supports are designed in spectral-domain by a nonlinear custom function of eigenvalues and masked with an arbitrary large receptive field, the MPNN is theoretically more powerful than the 1-WL test and experimentally as powerful as a 3-WL existing models, while remaining spatially localized. Moreover, by designing custom filter functions, outputs can have various frequency components that allow the convolution process to learn different relationships between a given input graph signal and its associated properties. So far, the best 3-WL equivalent graph neural networks have a computational complexity in O(n(3)) with memory usage in O(n(2)), consider non-local update mechanism and do not provide the spectral richness of output profile. The proposed method overcomes all these aforementioned problems and reaches state-of-the-art results in many downstream tasks.
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页数:10
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