A formal model for information selection in multi-sentence text extraction

COLING '04 Proceedings of the 20th international conference on Computational Linguistics(2004)

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摘要
Selecting important information while accounting for repetitions is a hard task for both summarization and question answering. We propose a formal model that represents a collection of documents in a two-dimensional space of textual and conceptual units with an associated mapping between these two dimensions. This representation is then used to describe the task of selecting textual units for a summary or answer as a formal optimization task. We provide approximation algorithms and empirically validate the performance of the proposed model when used with two very different sets of features, words and atomic events.
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关键词
associated mapping,multi-sentence text extraction,different set,formal optimization task,hard task,approximation algorithm,textual unit,conceptual unit,formal model,information selection,atomic event,computer science,question answering,information technology,difference set,two dimensions
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