Domain generalization by marginal transfer learning

被引:0
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作者
Blanchard, Gilles [1 ]
Deshmukh, Aniket Anand [2 ]
Dogan, Urun [2 ]
Lee, Gyemin [3 ]
Scott, Clayton [4 ]
机构
[1] Universite Paris-Saclay, CNRS, Inria, Laboratoire de mathematiques d'Orsay, France
[2] Microsoft AI and Research
[3] Dept. Electronic and IT Media Engineering, Seoul National University of Science and Technology, Korea, Republic of
[4] Electrical and Computer Engineering, Statistics University of Michigan, United States
关键词
Error analysis;
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摘要
In the problem of domain generalization (DG), there are labeled training data sets from several related prediction problems, and the goal is to make accurate predictions on future unlabeled data sets that are not known to the learner. This problem arises in several applications where data distributions uctuate because of environmental, technical, or other sources of variation. We introduce a formal framework for DG, and argue that it can be viewed as a kind of supervised learning problem by augmenting the original feature space with the marginal distribution of feature vectors. While our framework has several connections to conventional analysis of supervised learning algorithms, several unique aspects of DG require new methods of analysis. This work lays the learning theoretic foundations of domain generalization, building on our earlier conference paper where the problem of DG was introduced (Blanchard et al., 2011). We present two formal models of data generation, corresponding notions of risk, and distribution-free generalization error analysis. By focusing our attention on kernel methods, we also provide more quantitative results and a universally consistent algorithm. An e © 2021 Microtome Publishing. All rights reserved.
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