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arxiv: 1506.04573 · v4 · pith:5PETH5VHnew · submitted 2015-06-15 · 📊 stat.ML · cs.LG

A New PAC-Bayesian Perspective on Domain Adaptation

classification 📊 stat.ML cs.LG
keywords domainpac-bayesiansourcetargetadaptationbounddataperspective
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We study the issue of PAC-Bayesian domain adaptation: We want to learn, from a source domain, a majority vote model dedicated to a target one. Our theoretical contribution brings a new perspective by deriving an upper-bound on the target risk where the distributions' divergence---expressed as a ratio---controls the trade-off between a source error measure and the target voters' disagreement. Our bound suggests that one has to focus on regions where the source data is informative.From this result, we derive a PAC-Bayesian generalization bound, and specialize it to linear classifiers. Then, we infer a learning algorithmand perform experiments on real data.

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