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A Compare-Aggregate Model with External Knowledge for Query-Focused Summarization

机译:一个与外部知识的比较 - 聚合模型,用于查询摘要

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摘要

Query-focused extractive summarization aims to create a summary by selecting sentences from original document according to query relevance and redundancy. With recent advances of neural network models in natural language processing, attention mechanism is widely used to address text summarization task. However, existing methods are always based on a coarse-grained sentence-level attention, which likely to miss the intent of query and cause relatedness misalignment. To address the above problem, we introduce a fine-grained and interactive word-by-word attention to the query-focused extractive summarization system. In that way, we capture the real intent of query. We utilize a Compare-Aggregate model to implement the idea, and simulate the interactively attentive reading and thinking of human behavior. We also leverage external conceptual knowledge to enrich the model and fill the expression gap between query and document. In order to evaluate our method, we conduct experiments on DUC 2005-2007 query-focused summarization benchmark datasets. Experimental results demonstrate that our proposed approach achieves better performance than state-of-the-art.
机译:以查询为中心的提取摘要旨在通过根据查询相关性和冗余选择原始文档的句子来创建摘要。随着神经网络模型在自然语言处理中的最新进步,注意机制广泛用于解决文本摘要任务。然而,现有方法始终基于粗粒粒度的句子级关注,这可能会错过查询的目的并导致相关性错位。为了解决上述问题,我们引入了对查询的采掘摘要系统的细粒度和交互式的方式关注。通过这种方式,我们捕获了查询的真正意图。我们利用比较 - 骨料模型来实现这个想法,并模拟互动阅读和对人类行为的思考。我们还利用外部概念知识来丰富模型,并填补查询和文件之间的表达差距。为了评估我们的方法,我们对DUC 2005-2007查询摘要基准数据集进行实验。实验结果表明,我们的拟议方法比现有技术实现了更好的性能。

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