Neural network on Riemannian symmetric space such as hyperbolic space and the manifold of symmetric positive definite (SPD) matrices is an emerging subject of research in geometric deep learning. Based on the well-established framework of the Helgason-Fourier transform on the noncompact symmetric space, we present a fully-connected network and its associated ridgelet transform on the noncompact symmetric space, covering the hyperbolic neural network (HNN) and the SPDNet as special cases. The ridgelet transform is an analysis operator of a depth-2 continuous network spanned by neurons, namely, it maps an arbitrary given function to the weights of a network. Thanks to the coordinate-free reformulation, the role of nonlinear activation functions is revealed to be a wavelet function, and the reconstruction formula directly yields the universality of the proposed networks.
翻译:Riemannian对称空间的神经网络,如双曲空间和对称正正数矩阵,是几何深学研究的新课题。根据非对称对称空间的Helgason-Fourier变换的既定框架,我们在非对称空间上展示了一个完全连接的网络及其相关的脊柱变换,覆盖超双曲神经网络和SPDNet作为特例。脊椎变换是一个由神经元横跨的深层-2连续网络的分析操作器,即它绘制了网络重量的任意设定功能。由于协调不协调的重新组合,非线性激活功能的作用被揭示为波段功能,而重建公式直接产生拟议网络的普遍性。