This paper deals with the unsupervised domain adaptation problem, where one
wants to estimate a prediction function f in a given target domain without
any labeled sample by exploiting the knowledge available from a source domain
where labels are known. Our work makes the following assumption: there exists a
non-linear transformation between the joint feature/label space distributions
of the two domain Ps and Pt. We propose a solution of
this problem with optimal transport, that allows to recover an estimated target
Ptf=(X,f(X)) by optimizing simultaneously the optimal coupling
and f. We show that our method corresponds to the minimization of a bound on
the target error, and provide an efficient algorithmic solution, for which
convergence is proved. The versatility of our approach, both in terms of class
of hypothesis or loss functions is demonstrated with real world classification
and regression problems, for which we reach or surpass state-of-the-art
results.Comment: Accepted for publication at NIPS 201