Publication | Closed Access
Multi-Initialization Meta-Learning with Domain Adaptation
21
Citations
20
References
2021
Year
Unknown Venue
Artificial IntelligenceMeta-learning (Computer Science)EngineeringMachine LearningData ScienceMeta-learningDomain AdaptationDomain ShiftMultiple InitializationsInequality MeasureMultimodal LearningMulti-task LearningMulti-initialization Meta-learningComputer ScienceTransfer LearningDeep Learning
Recently, meta learning providing multiple initializations has drawn much attention due to its capability of handling multi-modal tasks drawn from diverse distributions. However, because of the difference of class distribution between meta-training and meta-test domain, the domain shift occurs in multi-modal meta-learning setting. To improve the performance on multi-modal tasks, we propose multi-initialization meta-learning with domain adaptation (MIML-DA) to tackle such domain shift. MIML-DA consists of a modulation network and a novel meta separation network (MSN), where the modulation network is to encode tasks into common and private modulation vectors, and then MSN uses these vectors separately to update the cross-domain meta-learner via a double-gradient descent process. In addition, the regularization using inequality measure is considered to improve the generalization ability of the meta-learner. Extensive experiments demonstrate the effectiveness of our MIML-DA method to new multi-modal tasks.
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