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목록Transfer Learning (1)
Let's Run Jinyeah
Transfer Learning and Domain Adaptation
“Domain” and “Task” Domain relates to the feature space of a specific dataset and the marginal probability distribution of features Task relates to the label space of a dataset and an objective predictive function Transfer Learning goal is to transfer the knowledge learned from the Task(a) on Domain A to the Task(b) on Domain B common to update the last several layers of the pre-trained network ..
Deep Learning/Theory
2022. 8. 10. 20:43