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by statusfailed
186 days ago
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I saw a similar (I think!) paper "Grassmannian Optimization Drives Generalization in Overparameterized DNN" at OPT-ML at neurips last week[0] This is a little outside my area, but I think the relevant part of that abstract is "Gradient-based optimization follows horizontal lifts across low-dimensional subspaces in the Grassmannian Gr(r, p), where r p is the rank of the Hessian at the optimum" I think this question is super interesting though: why can massively overparametrised models can still generalise? [0]: https://opt-ml.org/papers/2025/paper90.pdf |
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