Data Ordering Patterns for Neural Machine Translation: An Empirical Study

23 Sep 2019Siddhant Garg

Recent works show that ordering of the training data affects the model performance for Neural Machine Translation. Several approaches involving dynamic data ordering and data sharding based on curriculum learning have been analysed for the their performance gains and faster convergence... (read more)

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