In this paper, we introduce a convolutional architecture to perform learning when information is supported on multigraphs. Exploiting algebraic signal processing (ASP), we propose a convolutional signal processing model on multigraphs (MSP). Then, we introduce multigraph convolutional neural networks (MGNNs) as stacked and layered structures where information is processed according to an MSP model. We also develop a procedure for tractable computation of filter coefficients in the MGNN and a low cost method to reduce the dimensionality of the information transferred between layers. We conclude by comparing the performance of MGNNs against other learning architectures on an optimal resource allocation task for multi-channel communication systems.
翻译:在本文中,我们引入了一种革命结构,用于在多面线支持信息时进行学习。利用代数信号处理(ASP),我们提出了多面线(MSP)的革命信号处理模式。然后,我们引入了多层神经网络(MGNNs),作为按照MSP模式处理信息的堆叠和分层结构。我们还制定了可移植计算MGNN中过滤系数的程序,以及一种降低各层之间传递信息的维度的低成本方法。我们通过将MGNNs的表现与其他学习结构在多渠道通信系统的最佳资源分配任务上进行比较,得出了结论。