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arxiv: 1612.08875 · v3 · pith:Z5DPKFLRnew · submitted 2016-12-28 · 📊 stat.ML · cs.LG

The Pessimistic Limits and Possibilities of Margin-based Losses in Semi-supervised Learning

classification 📊 stat.ML cs.LG
keywords margin-basedconvexdatalabeledlosslossessemi-supervisedsurrogate
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Consider a classification problem where we have both labeled and unlabeled data available. We show that for linear classifiers defined by convex margin-based surrogate losses that are decreasing, it is impossible to construct any semi-supervised approach that is able to guarantee an improvement over the supervised classifier measured by this surrogate loss on the labeled and unlabeled data. For convex margin-based loss functions that also increase, we demonstrate safe improvements are possible.

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