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4 months ago

SummaRuNNer: A Recurrent Neural Network based Sequence Model for Extractive Summarization of Documents

Ramesh Nallapati; Feifei Zhai; Bowen Zhou

SummaRuNNer: A Recurrent Neural Network based Sequence Model for Extractive Summarization of Documents

Abstract

We present SummaRuNNer, a Recurrent Neural Network (RNN) based sequence model for extractive summarization of documents and show that it achieves performance better than or comparable to state-of-the-art. Our model has the additional advantage of being very interpretable, since it allows visualization of its predictions broken up by abstract features such as information content, salience and novelty. Another novel contribution of our work is abstractive training of our extractive model that can train on human generated reference summaries alone, eliminating the need for sentence-level extractive labels.

Code Repositories

no-execution/Summa_label
pytorch
Mentioned in GitHub
amagooda/SummaRuNNer_coattention
pytorch
Mentioned in GitHub
kedz/nnsum
pytorch
Mentioned in GitHub
dennlinger/summaries
Mentioned in GitHub
kotyukov/huaweiNLP
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
text-summarization-on-cnn-daily-mail-2SummaRuNNer
ROUGE-1: 39.6
ROUGE-2: 16.2
ROUGE-L: 35.3
text-summarization-on-cnn-daily-mail-2Lead-3 baseline
ROUGE-1: 39.2
ROUGE-2: 15.7
ROUGE-L: 35.5

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SummaRuNNer: A Recurrent Neural Network based Sequence Model for Extractive Summarization of Documents | Papers | HyperAI