A Two-Stage Weighting Framework for Multi-Source Domain Adaptation

Sun, Qian, Chattopadhyay, Rita, Panchanathan, Sethuraman, Ye, Jieping

Neural Information Processing Systems 

Discriminative learning when training and test data belong to different distributions is a challenging and complex task. Often times we have very few or no labeled data from the test or target distribution but may have plenty of labeled data from multiple related sources with different distributions. The difference in distributions may be in both marginal and conditional probabilities. Most of the existing domain adaptation work focuses on the marginal probability distribution difference between the domains, assuming that the conditional probabilities are similar. However in many real world applications, conditional probability distribution differences are as commonplace as marginal probability differences.