Paper

Zero-shot Domain Adaptation without Domain Semantic Descriptors

We propose a method to infer domain-specific models such as classifiers for unseen domains, from which no data are given in the training phase, without domain semantic descriptors. When training and test distributions are different, standard supervised learning methods perform poorly... (read more)

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