Learning to Weight Parameters for Training Data Attribution
arXiv:2506.05647v4 Announce Type: replace Abstract: We study gradient-based data attribution, aiming to identify which training examples most influence a given output. Existing methods for this task either treat network parameters uniformly or rely on implicit weighting derived from Hessian approximations,…
