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Concept-Map-Based Multi-Document Summarization using Concept Coreference Resolution and Global Importance Optimization

机译:使用概念共指解析和全局重要性优化的基于概念图的多文档摘要

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Concept-map-based multi-document summarization is a variant of traditional summarization that produces structured summaries in the form of concept maps. In this work, we propose a new model~1 for the task that addresses several issues in previous methods. It learns to identify and merge coreferent concepts to reduce redundancy, determines their importance with a strong supervised model and finds an optimal summary concept map via integer linear programming. It is also computationally more efficient than previous methods, allowing us to summarize larger document sets. We evaluate the model on two datasets, finding that it outperforms several approaches from previous work.
机译:基于概念图的多文档摘要是传统摘要的一种变体,它以概念图的形式生成结构化摘要。在这项工作中,我们为任务提出了一个新的模型〜1,该模型解决了以前方法中的几个问题。它学会识别和合并核心概念以减少冗余,通过强大的监督模型确定它们的重要性,并通过整数线性规划找到最佳的摘要概念图。与以前的方法相比,它在计算上也更加高效,从而使我们能够总结出更大的文档集。我们在两个数据集上评估了该模型,发现其性能优于先前工作中的几种方法。

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