Supervised Learning of Automatic Pyramid for Optimization-Based Multi-Document Summarization
2017-07-01ACL 2017Unverified0· sign in to hype
Maxime Peyrard, Judith Eckle-Kohler
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We present a new supervised framework that learns to estimate automatic Pyramid scores and uses them for optimization-based extractive multi-document summarization. For learning automatic Pyramid scores, we developed a method for automatic training data generation which is based on a genetic algorithm using automatic Pyramid as the fitness function. Our experimental evaluation shows that our new framework significantly outperforms strong baselines regarding automatic Pyramid, and that there is much room for improvement in comparison with the upper-bound for automatic Pyramid.