Meaning Representation (AMR) is a graph-based semantic representation for sentences, composed of collections of concepts linked by semantic relations. AMR-based approaches have found success in a variety of applications, but a challenge to using it in tasks that require document-level context is that it only represents individual sentences. Prior work in AMR-based summarization has automatically merged the individual sentence graphs into a document graph, but the method of merging and its effects on summary content selection have not been independently evaluated. In this paper, we present a novel dataset consisting of human-annotated alignments between the nodes of paired documents and summaries which may be used to evaluate (1) merge strategies; and (2) the performance of content selection methods over nodes of a merged or unmerged AMR graph. We apply these two forms of evaluation to prior work as well as a new method for node merging and show that our new method has significantly better performance than prior work.
翻译:表示方式(AMR)是一种基于图表的语义表达方式,它包含由语义关系所关联的概念组成的一系列概念。基于 AMR 的方法在各种应用中都取得了成功,但是,在需要文件级内容的任务中使用它的挑战在于它只代表个别的句子。基于 表示方式(AMR) 的先前工作自动将单个句子图形合并成一个文件图表,但合并的方法及其对摘要内容选择的影响没有独立评估。在本文中,我们提出了一个新的数据集,由对齐的文件节点和摘要节点(可用于评价(1) 合并战略) 和(2) 内容选择方法在合并或未合并的AMR图节点上的表现。我们将这两种形式的评价方式应用于先前的工作以及节点合并的新方法,并表明我们的新方法比以前的工作表现要好得多。