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Multi-stage Pretraining for Abstractive Summarization (1909.10599v1)

Published 23 Sep 2019 in cs.CL

Abstract: Neural models for abstractive summarization tend to achieve the best performance in the presence of highly specialized, summarization specific modeling add-ons such as pointer-generator, coverage-modeling, and inferencetime heuristics. We show here that pretraining can complement such modeling advancements to yield improved results in both short-form and long-form abstractive summarization using two key concepts: full-network initialization and multi-stage pretraining. Our method allows the model to transitively benefit from multiple pretraining tasks, from generic language tasks to a specialized summarization task to an even more specialized one such as bullet-based summarization. Using this approach, we demonstrate improvements of 1.05 ROUGE-L points on the Gigaword benchmark and 1.78 ROUGE-L points on the CNN/DailyMail benchmark, compared to a randomly-initialized baseline.

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Authors (3)
  1. Sebastian Goodman (12 papers)
  2. Zhenzhong Lan (56 papers)
  3. Radu Soricut (54 papers)
Citations (5)

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