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Oral
in
Workshop: 2nd ICML Workshop on New Frontiers in Adversarial Machine Learning

Context-Aware Self-Adaptation for Domain Generalization

Keywords: [ domain generalization ]


Abstract:

Domain generalization aims at developing suitable learning algorithms in source training domains such that the model learned can generalize well on a different unseen testing domain.We present a novel two-stage approach called Context-Aware Self-Adaptation (CASA) for domain generalization. CASA simulates an approximate meta-generalization scenario and incorporates a self-adaptation module to adjust pre-trained meta-source models to the meta-target domains while maintaining their predictive capability on the meta-source domains. The core concept of self-adaptation involves leveraging contextual information, such as the mean of mini-batch features, as domain knowledge to automatically adapt a model trained in the first stage to new contexts in the second stage.Lastly, we utilize an ensemble of multiple meta-source models to perform inference on the testing domain.Experimental results demonstrate that our proposed method achieves state-of-the-art performance on standard benchmarks.

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