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Joint Distribution Optimal Transportation for Domain Adaptation

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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 $\mathcal{P}_s$ and $\mathcal{P}_t$. We propose a solution of this problem with optimal transport, that allows to recover an estimated target $\mathcal{P}^f_t=(X,f(X))$ 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.

Nicolas Courty, R\'emi Flamary, Amaury Habrard, Alain Rakotomamonjy• 2017

Related benchmarks

TaskDatasetResultRank
Group Lasso RegularizationSimulated datasets n=500, m=500
Median Runtime (s)1.02
15
Group Lasso RegularizationSimulated datasets m=1000, n=1000
Runtime (s) Median4.61
15
Optimal Transport Distance ComputationSimulated Optimal Transport Dataset m=1000, n=1500
Median Runtime (s)3.69
15
Domain Adaptation RegressiondSprites
Transfer Accuracy (C to N)0.86
9
RegressionBiwi Kinect (test)
MAE (M -> F)0.29
9
Unsupervised Domain Adaptation RegressionMPI3D
Error (RL -> RC)0.16
9
Domain AdaptationSimulated datasets
Median Runtime (s)1.86
5
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