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Hidden geometry explains why kernel methods separate complex data so well
- June 8, 2026 at 9:50 PM
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Are two sets of data genuinely different, or is it because of randomness? This question, known as the two-sample testing problem, becomes notoriously difficult in modern datasets, because they are often high-dimensional, complex, and differences between them can take countless subtle forms.
Originally published at Phys.org