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Multi-Reward Reinforced Summarization with Saliency and Entailment

About

Abstractive text summarization is the task of compressing and rewriting a long document into a short summary while maintaining saliency, directed logical entailment, and non-redundancy. In this work, we address these three important aspects of a good summary via a reinforcement learning approach with two novel reward functions: ROUGESal and Entail, on top of a coverage-based baseline. The ROUGESal reward modifies the ROUGE metric by up-weighting the salient phrases/words detected via a keyphrase classifier. The Entail reward gives high (length-normalized) scores to logically-entailed summaries using an entailment classifier. Further, we show superior performance improvement when these rewards are combined with traditional metric (ROUGE) based rewards, via our novel and effective multi-reward approach of optimizing multiple rewards simultaneously in alternate mini-batches. Our method achieves the new state-of-the-art results (including human evaluation) on the CNN/Daily Mail dataset as well as strong improvements in a test-only transfer setup on DUC-2002.

Ramakanth Pasunuru, Mohit Bansal• 2018

Related benchmarks

TaskDatasetResultRank
SummarizationCNN/Daily Mail original, non-anonymized (test)
ROUGE-140.43
54
Abstractive SummarizationCNN/Daily Mail non-anonymous (test)
ROUGE-140.43
52
SummarizationGigaword (test)
ROUGE-215.35
38
SummarizationCNN/Daily Mail (test)
Relevance55
8
Abstractive SummarizationCNN/Daily Mail full-text (test)
NN Score (2)2.37
5
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