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Pretraining Based Natural Language Generation for Text Summarization

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Figure

Figure 1: Model Overview, N represents decoder layer number and L represents summary length.
Table 1: ROUGE F1 results for various models and ablations on the CNN/Daily Mail test set
Figure 2:Average ROUGE-L improvement onCNN/Daily mail test set samples with different goldensummary length.
Table 2: Limited length ROUGE recall results on the NYT50 test set.

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