Manifold Constrained Tabular Deep Neural Networks
arXiv:2607.09710v1 Announce Type: new Abstract: Tabular classification is often governed by local, condition-triggered rules rather than smooth global patterns. However, tabular deep neural networks (DNNs) are typically built upon Euclidean representations that favor smooth variations and semantic locality. This potential geometric mismatch can make it challenging for tabular DNNs to efficiently represent the discrete, rule-partitioned structures often underlying tabular classification. To addre...
arXiv cs.LG
·Tian Li, Lucy Robinson, Varun Ojha, Huizhi Liang
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