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Single Document Summarization as Tree Induction

机译:单一文档摘要作为树归纳法

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摘要

In this paper we conceptualize single-document extractive summarization as a tree induction problem. In contrast to previous approaches (Marcu, 1999; Yoshida et al., 2014) which have relied on linguistically motivated document representations to generate summaries, our model induces a multi-root dependency tree while predicting the output summary. Each root node in the tree is a summary sentence, and the subtrees attached to it are sentences whose content relates to or explains the summary sentence. We design a new iterative refinement algorithm: it induces the trees through repeatedly refining the structures predicted by previous iterations. We demonstrate experimentally on two benchmark datasets that our summarizer performs competitively against state-of-the-art methods.
机译:在本文中,我们将单文档提取摘要概念化为树归纳问题。与以前的方法(Marcu,1999; Yoshida等,2014)不同,后者依靠语言动机的文档表示来生成摘要,我们的模型在预测输出摘要时会引入多根依赖树。树中的每个根节点都是一个摘要语句,与之相连的子树是其内容与该摘要语句有关或对其进行解释的语句。我们设计了一种新的迭代细化算法:它通过反复细化先前迭代预测的结构来诱导树木。我们在两个基准数据集上进行实验证明,我们的汇总器与最新方法相比具有竞争优势。

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