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Information Extraction for Question Answering: Improving Recall Through Syntactic Patterns

机译:问答中的信息提取:通过句法模式改善回忆

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We investigate the impact of the precision/recall trade-off of information extraction on the performance of an offline corpus-based question answering (QA) system. One of our findings is that, because of the robust final answer selection mechanism of the QA system, recall is more important. We show that the recall of the extraction component can be improved using syntactic parsing instead of more common surface text patterns, substantially increasing the number of factoid questions answered by the QA system.
机译:我们调查的信息提取精度/召回权衡对基于脱机语料库的问答系统(QA)的性能的影响。我们的发现之一是,由于QA系统强大的最终答案选择机制,召回更为重要。我们表明,可以使用句法分析而不是更常见的表面文字样式来改善提取组件的召回率,从而显着增加QA系统所回答的事实性问题的数量。

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