Litcius/Paper detail

Meta-learning for efficient unsupervised domain adaptation

Anna Vettoruzzo, Mohamed-Rafik Bouguelia, Thorsteinn Rögnvaldsson

2024Neurocomputing14 citationsDOIOpen Access PDF

Abstract

The standard machine learning assumption that training and test data are drawn from the same probability distribution does not hold in many real-world applications due to the inability to reproduce testing conditions at training time. Existing unsupervised domain adaption (UDA) methods address this problem by learning a domain-invariant feature space that performs well on available source domain(s) (labeled training data) and the specific target domain (unlabeled test data). In contrast, instead of simply adapting to domains, this paper aims for an approach that learns to adapt effectively to new unlabeled domains. To do so, we leverage meta-learning to optimize a neural network such that an unlabeled adaptation of its parameters to any domain would yield a good generalization on this latter. The experimental evaluation shows that the proposed approach outperforms standard approaches even when a small amount of unlabeled test data is used for adaptation, demonstrating the benefit of meta-learning prior knowledge from various domains to solve UDA problems.

Topics & Concepts

Computer scienceLeverage (statistics)Artificial intelligenceMachine learningDomain adaptationTest dataLabeled dataGeneralizationArtificial neural networkUnsupervised learningDomain (mathematical analysis)Adaptation (eye)Feature learningMathematicsClassifier (UML)Mathematical analysisOpticsPhysicsProgramming languageDomain Adaptation and Few-Shot LearningMultimodal Machine Learning Applications