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RelationListwise for query-focused multi-document summarization

机译:相关列表,用于查询的多文件摘要

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Most existing learning to rank based summarization methods only used content relevance of sentences with respect to queries to rank or estimate sentences, while neglecting sentence relationships. In our work, we propose a novel model, RelationListwise, by integrating relation information among all the estimated sentences into listMLE-Top K, a basic listwise learning to rank model, to improve the quality of top-ranked sentences. In addition, we present some unique sentence features as well as a novel measure of sentence semantic relation, aiming to enhance the performance of training model. Experimental results on DUC2005-2007 standard summarization data sets demonstrate the effectiveness of our proposed method.
机译:最现有的学习,基于序列的序列化方法仅使用句子的内容相关性对查询进行排名或估计句子,而忽略句子关系。在我们的工作中,我们通过将所有估计的句子之间的关系信息集成到Listmle-top k中的基本列表学习到排名模型的基本列表,提高排名模型的质量,提出了一种新颖的模型。此外,我们展示了一些独特的句子特征以及一种新颖的句子语义关系,旨在提高培训模型的性能。 DUC2005-2007标准摘要数据集的实验结果证明了我们提出的方法的有效性。

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