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Crowdsourcing Question-Answer Meaning Representations

机译:众包质疑答案意义呈现

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We introduce Question-Answer Meaning Representations (QAMRs), which represent the predicate-argument structure of a sentence as a set of question-answer pairs. We develop a crowdsourcing scheme to show that QAMRs can be labeled with very little training, and gather a dataset with over 5.000 sentences and 100,000 questions. A qualitative analysis demonstrates that the crowd-generated question-answer pairs cover the vast majority of predicate-argument relationships in existing datasets (including PropBank, Nom-Bank, and QA-SRL) along with many previously under-resourced ones, including implicit arguments and relations. We also report baseline models for question generation and answering, and summarize a recent approach for using QAMR labels to improve an Open IE system. These results suggest the freely available QAMR data and annotation scheme should support significant future work.
机译:我们介绍问题答案意义表示表示(QAMR),它将句子的谓词参数结构表示为一组问题答案对。我们开发了一个众群计划,以表明QAMR可以用很少的训练标记,并收集一个超过5000个句子和100,000个问题的数据集。定性分析表明,人群生成的问题答案对涵盖了现有数据集(包括Propbank,Nom-Bank和QA-SRL)中的绝大多数谓词关系,以及许多以前的资源估计,包括隐式参数和关系。我们还报告了问题生成和回答的基线模型,并总结了最近使用QAMR标签来改进开放式IE系统的方法。这些结果表明自由可用的QAMR数据和注释计划应支持重要的未来工作。

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