Trainable, scalable summarization using robust NLP and machine learning

COLING '98 Proceedings of the 17th international conference on Computational linguistics - Volume 1(1998)

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摘要
We describe a trainable and scalable summarization system which utilizes features derived from information retrieval, information extraction, and NLP techniques and on-line resources. The system combines these features using a trainable feature combiner learned from summary examples through a machine learning algorithm. We demonstrate system scalability by reporting results on the best combination of summarization features for different document sources. We also present preliminary results from a task-based evaluation on summarization output usability.
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关键词
system scalability,summarization output usability,nlp technique,information retrieval,robust nlp,machine learning,different document source,scalable summarization system,trainable feature combiner,summarization feature,best combination,information extraction
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