Revealing Distribution Discrepancy by Sampling Transfer in Unlabeled Data

Neural Information Processing Systems 

The assumption that data are independently and identically distributed (IID) is staple in statistical machine learning. It suggests that a hypothesis selected by an algorithm, after observing several training samples, should perform effectively on test samples from the same unknown distribution.

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