2cfa8f9e50e0f510ede9d12338a5f564-AuthorFeedback.pdf
–Neural Information Processing Systems
We thank the reviewers for their feedback. Our'formulation is generic and task-agnostic and therefore has the potential'The model simplifies existing work' ( R1) and'has been applied to many loss functions and tasks without any change'The experiments cover different tasks and benchmark datasets' ( R3). 'It is misleading to claim that the paper is the first work using task-agnostic weights that do not require iterative W e do not make such a claim . We believe a simple and easy-to-use idea has potential for great impact. We review (in Section 2.1 and Section 1 from the supplementary) We therefore propose in Section 2.2 the Section 2.3); (2) handle both positive-and negative-valued losses (which justifies the squared regularizer log term'Does not brings notably new criteria in determining the sample weights' (R3.3). 'SuperLoss does not show an advantage on clean data' (R3.4).
Neural Information Processing Systems
Feb-7-2026, 23:04:58 GMT
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