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paperarXivTrust 82 · PrimaryPublished 2d agoLive · 21h ago

Group-invariant Coresets for Data-efficient Active Learning

Active learning reduces labeling cost by querying the most informative unlabeled samples, but standard coreset methods ignore known data symmetries and can waste budget on transformed versions of the same instance. We propose GRINCO, a group-invariant coreset framework that performs acquisition in the quotient space induced by a transformation group, so that selection operates on orbits rather than raw samples. The method uses either canonical representatives or learned orbit-separating invariant embeddings to define practical quotient metrics, and combines quotient-space k-center selection wi

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  • Linked via arxiv authorL. C. Ayres

    Group-invariant Coresets for Data-efficient Active Learning

  • Linked via arxiv authorJ. C. M. Bermudez

    Group-invariant Coresets for Data-efficient Active Learning

  • Linked via arxiv authorS. J. M. de Almeida

    Group-invariant Coresets for Data-efficient Active Learning

  • Linked via arxiv authorR. A. Borsoi

    Group-invariant Coresets for Data-efficient Active Learning

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