Conceptual Graphs as Framework for Summarizing Short Texts

Sabino Miranda-Jiménez, Alexander Gelbukh, G. Sidorov
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引用次数: 4

Abstract

In this paper, a conceptual graph-based framework for summarizing short texts is proposed. A semantic representation is implemented through conceptual graph structures that consist of concepts and conceptual relations that stand for texts. To summarize conceptual graphs, the most important nodes are selected using a set of operations: generalization, association, ranking, and pruning, which are described. The importance of nodes on weighted conceptual graphs is measured using a modified version of HITS algorithm. In addition, some heuristic rules are used to keep coherent structures based on information from WordNet hierarchy of concepts and VerbNet semantic patterns of verbs. The experimental results show that this approach is effective in summarizing short texts.
概念图作为总结短文本的框架
本文提出了一种基于概念图的短文本总结框架。语义表示是通过概念图结构实现的,概念图结构由代表文本的概念和概念关系组成。为了总结概念图,使用一组操作选择最重要的节点:概括、关联、排序和修剪,这些操作被描述。利用改进的HITS算法测量加权概念图上节点的重要性。此外,基于WordNet的概念层次信息和动词动词的动词语义模式,使用启发式规则来保持结构的一致性。实验结果表明,该方法对短文本的摘要是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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