Narrative Graph: Telling Evolving Stories Based on Event-centric Temporal Knowledge Graph.

IF 1.7 4区 管理学 Q3 OPERATIONS RESEARCH & MANAGEMENT SCIENCE
Zhihua Yan, Xijin Tang
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引用次数: 3

Abstract

As the main channel for people to obtain information and express their opinions, online media generate a huge amount of unstructured news documents every day and make it difficult for people to perceive major societal events and grasp the evolution of events. Previous studies on storyline generation are generally based on document clustering without considering event arguments and relations between events. Event-centric knowledge graph has been used to facilitate the construction of news documents to form structured event representation. Although some studies have attempted to construct timelines based on event-centric knowledge graphs, it is difficult for timelines to depict the complex structures of event evolution. In this paper, we try to represent news documents as an event-centric knowledge graph, and compress the whole knowledge graph into salient complex events in temporal order to generate storylines named narrative graph. We first collect news documents from news platforms, construct an event ontology, and build an event-centric knowledge graph with temporal relations. Graph neural network is used to detect events, while BERT fine-tuning is leveraged to identify temporal relations between events. Then, a novel generation framework of narrative graph with constraints of coherence and coverage is proposed. In addition, a case study is implemented to demonstrate how to utilize narrative graph to analyze real-world event. The experiment results show that our approach significantly outperforms the baseline approaches.

叙事图:基于以事件为中心的时间知识图的故事讲述。
网络媒体作为人们获取信息和表达意见的主要渠道,每天产生大量的非结构化新闻文档,给人们感知重大社会事件和把握事件演变带来了困难。以往关于故事线生成的研究一般基于文档聚类,没有考虑事件参数和事件之间的关系。以事件为中心的知识图谱被用于促进新闻文档的构建,形成结构化的事件表示。尽管一些研究试图基于以事件为中心的知识图谱构建时间线,但时间线难以描述事件演化的复杂结构。本文尝试将新闻文档表示为以事件为中心的知识图谱,并将整个知识图谱在时间上压缩为显著的复杂事件,生成故事线,即叙事图谱。首先从新闻平台收集新闻文档,构建事件本体,构建以事件为中心的具有时间关系的知识图谱。图神经网络用于检测事件,BERT微调用于识别事件之间的时间关系。在此基础上,提出了一种具有连贯和覆盖约束的叙事图生成框架。此外,本文还通过一个案例来说明如何利用叙事图来分析现实世界中的事件。实验结果表明,我们的方法明显优于基线方法。
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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来源期刊
Journal of Systems Science and Systems Engineering
Journal of Systems Science and Systems Engineering 管理科学-运筹学与管理科学
CiteScore
2.70
自引率
16.70%
发文量
23
审稿时长
>12 weeks
期刊介绍: Journal of Systems Science and Systems Engineering is an international journal published bimonthly. It aims to foster new thinking and research, to help decision makers to understand the mechanism and complexity of economic, engineering, management, social and technological systems, and learn new developments in theory and practice that could help to improve the performance of systems. The Journal publishes papers that address the theory, methodology and applications relating to systems science and systems engineering; applications and practical experience of systems engineering in various fields of industry, agriculture, service sector, environment, finance, operating management, E-commerce, logistics, information systems. Technical notes solving practical problems and reviews are also welcome.
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