Hard-label delivery via multipass or SLS matches or beats soft-label training on annotator disagreement data when annotations are sparse and leads to flatter minima.
and Ravikumar, Pradeep and Tewari, Ambuj , title =
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Same Target, Different Basins: Hard vs. Soft Labels for Annotator Distributions
Hard-label delivery via multipass or SLS matches or beats soft-label training on annotator disagreement data when annotations are sparse and leads to flatter minima.