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arxiv: 2410.14639 · v1 · pith:A2VFYZ3X · submitted 2024-10-18 · cs.LG · eess.SP· stat.ML

Convergence of Manifold Filter-Combine Networks

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classification cs.LG eess.SPstat.ML
keywords manifoldnetworksfilter-combinegnnsgraphmethodmfcnsmnns
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In order to better understand manifold neural networks (MNNs), we introduce Manifold Filter-Combine Networks (MFCNs). The filter-combine framework parallels the popular aggregate-combine paradigm for graph neural networks (GNNs) and naturally suggests many interesting families of MNNs which can be interpreted as the manifold analog of various popular GNNs. We then propose a method for implementing MFCNs on high-dimensional point clouds that relies on approximating the manifold by a sparse graph. We prove that our method is consistent in the sense that it converges to a continuum limit as the number of data points tends to infinity.

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