Double data piling: a high-dimensional solution for asymptotically perfect multi-category classification

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For high-dimensional classification, interpolation of training data manifests as the data piling phenomenon, in which linear projections of data vectors from each class collapse to a single value. Recent research has revealed an additional phenomenon known as the 'second data piling' for independent test data in binary classification, providing a theoretical understanding of asymptotically perfect classification. This paper extends these findings to multi-category classification and provides a comprehensive characterization of the double data piling phenomenon. We define the maximal data piling subspace, which maximizes the sum of pairwise distances between piles of training data in multi-category classification. Furthermore, we show that a second data piling subspace that induces data piling for independent data exists and can be consistently estimated by projecting the negatively-ridged discriminant subspace onto an estimated 'signal' subspace. By leveraging this second data piling phenomenon, we propose a bias-correction strategy for class assignments, which asymptotically achieves perfect classification. The present research sheds light on benign overfitting and enhances the understanding of perfect multi-category classification of high-dimensional discrimination with a help of high-dimensional asymptotics.
Publisher
SPRINGER HEIDELBERG
Issue Date
2024-09
Language
English
Article Type
Article
Citation

JOURNAL OF THE KOREAN STATISTICAL SOCIETY, v.53, no.3, pp.704 - 737

ISSN
1226-3192
DOI
10.1007/s42952-024-00263-6
URI
http://hdl.handle.net/10203/323172
Appears in Collection
IE-Journal Papers(저널논문)
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