Unsupervised Domain Adaptation with a Relaxed Covariate Shift Assumption
Adel, Tameem (University of Manchester) | Zhao, Han (Carnegie Mellon University) | Wong, Alexander (University of Waterloo)
The distributions can be different (Storkey and Sugiyama 2006; training and test domains are commonly referred to in the Ben-David and Urner 2012; 2014). Covariate shift is a valid domain adaptation literature as the source and target domains, assumption in some problems, but it can as well be quite respectively. Domain diversity can emerge as a result of the unrealistic for many other domain adaptation tasks where the scarcity of available labeled data from the target domain. It conditional label distributions are not (or, more precisely, not can as well be innate in the problem itself due to, for example, guaranteed to be) identical. The simplification resulting from an ongoing change occurring to the source domain like assuming identical labeling distributions facilitates the quest in cases where the original source domain keeps changing for a tractable learning algorithm, albeit possibly at the cost over time. Domain adaptation aims at finding solutions for of reducing the expressiveness power of the representation, this kind of problem, where the training (source) data are and consequently the accuracy of the resulting hypothesis.
Feb-14-2017