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Objective Function Learning to Match Human Judgements for Optimization-Based Summarization

2018-06-01NAACL 2018Unverified0· sign in to hype

Maxime Peyrard, Iryna Gurevych

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Abstract

Supervised summarization systems usually rely on supervision at the sentence or n-gram level provided by automatic metrics like ROUGE, which act as noisy proxies for human judgments. In this work, we learn a summary-level scoring function including human judgments as supervision and automatically generated data as regularization. We extract summaries with a genetic algorithm using as a fitness function. We observe strong and promising performances across datasets in both automatic and manual evaluation.

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