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Answers Unite! Unsupervised Metrics for Reinforced Summarization Models

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Abstractive summarization approaches based on Reinforcement Learning (RL) have recently been proposed to overcome classical likelihood maximization. RL enables to consider complex, possibly non-differentiable, metrics that globally assess the quality and relevance of the generated outputs. ROUGE, the most used summarization metric, is known to suffer from bias towards lexical similarity as well as from suboptimal accounting for fluency and readability of the generated abstracts. We thus explore and propose alternative evaluation measures: the reported human-evaluation analysis shows that the proposed metrics, based on Question Answering, favorably compares to ROUGE -- with the additional property of not requiring reference summaries. Training a RL-based model on these metrics leads to improvements (both in terms of human or automated metrics) over current approaches that use ROUGE as a reward.

Thomas Scialom, Sylvain Lamprier, Benjamin Piwowarski, Jacopo Staiano• 2019

Related benchmarks

TaskDatasetResultRank
Summarization EvaluationSummEval 1.0 (test)
Coherence (Spearman rho)0.1239
21
Document RankingRose (test)
Kendall Tau0.167
12
Summarization EvaluationSummEval Relevance Domain
Corr.0.92
8
Hallucination DetectionFaithful 2020
Spearman Correlation0.044
7
Hallucination DetectionMaynez Factual 2020
Spearman Correlation0.027
7
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