SiGNN: A Spike-induced Graph Neural Network for Dynamic Graph Representation Learning
arxiv(2024)
摘要
In the domain of dynamic graph representation learning (DGRL), the efficient
and comprehensive capture of temporal evolution within real-world networks is
crucial. Spiking Neural Networks (SNNs), known as their temporal dynamics and
low-power characteristic, offer an efficient solution for temporal processing
in DGRL task. However, owing to the spike-based information encoding mechanism
of SNNs, existing DGRL methods employed SNNs face limitations in their
representational capacity. Given this issue, we propose a novel framework named
Spike-induced Graph Neural Network (SiGNN) for learning enhanced
spatialtemporal representations on dynamic graphs. In detail, a harmonious
integration of SNNs and GNNs is achieved through an innovative Temporal
Activation (TA) mechanism. Benefiting from the TA mechanism, SiGNN not only
effectively exploits the temporal dynamics of SNNs but also adeptly circumvents
the representational constraints imposed by the binary nature of spikes.
Furthermore, leveraging the inherent adaptability of SNNs, we explore an
in-depth analysis of the evolutionary patterns within dynamic graphs across
multiple time granularities. This approach facilitates the acquisition of a
multiscale temporal node representation.Extensive experiments on various
real-world dynamic graph datasets demonstrate the superior performance of SiGNN
in the node classification task.
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