Publication | Open Access
Domain Adaptation: Learning Bounds and Algorithms
461
Citations
24
References
2009
Year
Artificial IntelligenceEngineeringMachine LearningArbitrary Loss FunctionsData SciencePattern RecognitionSemi-supervised LearningSupervised LearningStatisticsLoss FunctionsKnowledge DiscoveryFeature TransformationComputer ScienceStatistical Learning TheoryDeep LearningDomain AdaptationStatistical InferenceTransfer LearningLearning Bounds
This paper addresses the general problem of domain adaptation which arises in a variety of applications where the distribution of the labeled sample available somewhat differs from that of the test data. Building on previous work by Ben-David et al. (2007), we introduce a novel distance between distributions, discrepancy distance, that is tailored to adaptation problems with arbitrary loss functions. We give Rademacher complexity bounds for estimating the discrepancy distance from finite samples for different loss functions. Using this distance, we derive novel generalization bounds for domain adaptation for a wide family of loss functions. We also present a series of novel adaptation bounds for large classes of regularization-based algorithms, including support vector machines and kernel ridge regression based on the empirical discrepancy. This motivates our analysis of the problem of minimizing the empirical discrepancy for various loss functions for which we also give novel algorithms. We report the results of preliminary experiments that demonstrate the benefits of our discrepancy minimization algorithms for domain adaptation.
| Year | Citations | |
|---|---|---|
Page 1
Page 1