Sentence Simplification for Semantic Role Labelling and Information Extraction

R. Evans, Constantin Orasan
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引用次数: 7

Abstract

In this paper, we report on the extrinsic evaluation of an automatic sentence simplification method with respect to two NLP tasks: semantic role labelling (SRL) and information extraction (IE). The paper begins with our observation of challenges in the intrinsic evaluation of sentence simplification systems, which motivates the use of extrinsic evaluation of these systems with respect to other NLP tasks. We describe the two NLP systems and the test data used in the extrinsic evaluation, and present arguments and evidence motivating the integration of a sentence simplification step as a means of improving the accuracy of these systems. Our evaluation reveals that their performance is improved by the simplification step: the SRL system is better able to assign semantic roles to the majority of the arguments of verbs and the IE system is better able to identify fillers for all IE template slots.
语义角色标注与信息提取的句子简化
在本文中,我们报告了一种自动句子简化方法在两个NLP任务:语义角色标记(SRL)和信息提取(IE)方面的外在评价。本文首先观察了句子简化系统的内在评价所面临的挑战,这促使我们在其他NLP任务中使用这些系统的外在评价。我们描述了两种NLP系统和外部评价中使用的测试数据,并提出了促使句子简化步骤集成作为提高这些系统准确性的方法的论据和证据。我们的评估表明,它们的性能通过简化步骤得到了改善:SRL系统能够更好地为动词的大多数参数分配语义角色,IE系统能够更好地识别所有IE模板槽的填充符。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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