The manifold scattering transform is a deep feature extractor for data defined on a Riemannian manifold. It is one of the first examples of extending convolutional neural network-like operators to general manifolds. The initial work on this model focused primarily on its theoretical stability and invariance properties but did not provide methods for its numerical implementation except in the case of two-dimensional surfaces with predefined meshes. In this work, we present practical schemes, based on the theory of diffusion maps, for implementing the manifold scattering transform to datasets arising in naturalistic systems, such as single cell genetics, where the data is a high-dimensional point cloud modeled as lying on a low-dimensional manifold. We show that our methods are effective for signal classification and manifold classification tasks.
翻译:多元散射变异是Riemannian 方块上定义的数据的深层地貌提取器,是将类似神经网络的进化神经网络操作器扩展至普通元件的首批例子之一。该模型的初步工作主要侧重于理论稳定性和易变特性,但除了预先定义的介质的二维表面外,没有提供数字执行方法。在这项工作中,我们根据扩散图理论,提出了实施向自然系统(如单细胞遗传学)产生的数据集进行多层散射变的实用计划,在这种系统中,数据是高维点云,以低维元为模型。我们表明,我们的方法对于信号分类和多重分类任务是有效的。