Sketchy Moment Matching: Toward Fast and Provable Data Selection for Finetuning
Abstract
We revisit data selection in a modern context of finetuning from a fundamental perspective. Extending the classical wisdom of variance minimization in low dimensions to high-dimensional finetuning, our generalization analysis unveils the importance of additionally reducing bias induced by low-rank approximation. Inspired by the variance-bias tradeoff in high dimensions from the theory, we introduce Sketchy Moment Matching (SkMM), a scalable data selection scheme with two stages. (i) First, the bias is controlled using gradient sketching that explores the finetuning parameter space for an informative low-dimensional subspace S; (ii) then the variance is reduced over S via moment matching between the original and selected datasets. Theoretically, we show that gradient sketching is fast and provably accurate: selecting n samples by reducing variance over S preserves the fast-rate generalization O((S)/n), independent of the parameter dimension. Empirically, we concretize the variance-bias balance via synthetic experiments and demonstrate the effectiveness of SkMM for finetuning in real vision tasks.
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