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On Extractive and Abstractive Neural Document Summarization with Transformer Language Models

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arxiv 1909.03186 v2 pith:XLMKO3BT submitted 2019-09-07 cs.CL

On Extractive and Abstractive Neural Document Summarization with Transformer Language Models

classification cs.CL
keywords abstractiveextractivesummarizationbeforegeneratinglanguagemodelsneural
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We present a method to produce abstractive summaries of long documents that exceed several thousand words via neural abstractive summarization. We perform a simple extractive step before generating a summary, which is then used to condition the transformer language model on relevant information before being tasked with generating a summary. We show that this extractive step significantly improves summarization results. We also show that this approach produces more abstractive summaries compared to prior work that employs a copy mechanism while still achieving higher rouge scores. Note: The abstract above was not written by the authors, it was generated by one of the models presented in this paper.

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  1. Enriching and Controlling Global Semantics for Text Summarization

    cs.CL 2021-09 unverdicted novelty 5.0

    A normalizing-flow neural topic model plus control mechanism are added to Transformer summarizers to supply and regulate global semantics, with reported gains over prior models on five benchmarks.