The construction and application of knowledge graphs have seen a rapid increase across many disciplines in recent years. Additionally, the problem of uncovering relationships between developments in the COVID-19 pandemic and social media behavior is of great interest to researchers hoping to curb the spread of the disease. In this paper we present a knowledge graph constructed from COVID-19 related tweets in the Los Angeles area, supplemented with federal and state policy announcements and disease spread statistics. By incorporating dates, topics, and events as entities, we construct a knowledge graph that describes the connections between these useful information. We use natural language processing and change point analysis to extract tweet-topic, tweet-date, and event-date relations. Further analysis on the constructed knowledge graph provides insight into how tweets reflect public sentiments towards COVID-19 related topics and how changes in these sentiments correlate with real-world events.
翻译:近些年来,知识图的构建和应用在多个学科中迅速增加,此外,发现COVID-19大流行的发展与社交媒体行为之间的关系问题对于希望遏制该疾病蔓延的研究人员来说具有极大的意义,在本文件中,我们介绍了由COVID-19相关推文在洛杉矶地区构建的知识图,并辅之以联邦和州的政策公告和疾病传播统计数据。通过将日期、专题和事件作为实体,我们构建了一个说明这些有用信息之间联系的知识图。我们使用自然语言处理和变更点分析来提取推文专栏、推文日期和事件日期关系。对构建的知识图的进一步分析可以深入了解推文如何反映公众对COVID-19相关专题的看法,以及这些情绪的变化如何与现实世界事件相关。