AI RESEARCH
TopoU-Net: a U-Net architecture for topological domains
arXiv CS.LG
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ArXi:2605.10091v1 Announce Type: new Many modern datasets mix points, edges, regions, groups, objects, events, hyperedges, and relations. Yet neural architectures often force such data into grids, graphs, or sequences, obscuring higher-order structure and making encoder-decoder designs domain-specific. We view U-Net not as a grid-specific architecture, but as a hierarchical encoder-decoder principle: representation spaces, transport maps between levels, and skip connections between matched levels.