Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Unbalanced minibatch Optimal Transport; applications to Domain Adaptation

About

Optimal transport distances have found many applications in machine learning for their capacity to compare non-parametric probability distributions. Yet their algorithmic complexity generally prevents their direct use on large scale datasets. Among the possible strategies to alleviate this issue, practitioners can rely on computing estimates of these distances over subsets of data, {\em i.e.} minibatches. While computationally appealing, we highlight in this paper some limits of this strategy, arguing it can lead to undesirable smoothing effects. As an alternative, we suggest that the same minibatch strategy coupled with unbalanced optimal transport can yield more robust behavior. We discuss the associated theoretical properties, such as unbiased estimators, existence of gradients and concentration bounds. Our experimental study shows that in challenging problems associated to domain adaptation, the use of unbalanced optimal transport leads to significantly better results, competing with or surpassing recent baselines.

Kilian Fatras, Thibault S\'ejourn\'e, Nicolas Courty, R\'emi Flamary• 2021

Related benchmarks

TaskDatasetResultRank
Partial Domain AdaptationOffice-Home
Average Accuracy75.5
97
Facial Expression RecognitionCK+
Accuracy79.46
72
Facial Expression RecognitionJAFFE
Accuracy54.13
36
Facial Expression RecognitionSFEW 2.0
Accuracy51.97
27
Facial Expression RecognitionExpW
Accuracy63.69
27
Partial-set Unsupervised Domain AdaptationOffice-Home Partial-set 76
Accuracy (Ar -> Cl)62.7
20
Showing 6 of 6 rows

Other info

Follow for update