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Papers/Objective-Specific Privileged Bases via Full-Prefix Matryoshka Learning
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Objective-Specific Privileged Bases via Full-Prefix Matryoshka Learning

May 9, 2026

arXiv
Abstract

Learned representations are often invariant to rotational transformations, leaving individual dimensions non-identifiable and interchangeable. We study how Matryoshka Representation Learning (MRL) induces a task-aligned privileged basis distinct from variance-based or regularizer-induced orderings. In the linear setting, we prove that full-prefix MRL recovers the ordered principal directions, and can be computed efficiently using shared statistics. Empirically, we demonstrate that MRL yields consistent per-dimension structure aligned with task signal, where coordinate magnitude reflects informativeness.

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Authors
Arghamitra Talukder, Philippe Chlenski, Itsik Pe'er
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arXiv:2605.09160