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Modeling interurban mentioning relationships in the U.S. Twitter network using geo-hashtags

机译:使用Geo-Hashtags建模的Interurban提到了U.S. Twitter网络中的关系

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Twitter users mention cities in the context of tourist attractions or events, such as protests or games, thus forming a network between cities from which they tweet and cities that they tweet about. This study tackles the challenge of explaining why users tweet about cities outside of their own by analyzing an underlying network of city mentions on Twitter. It applies graph theory as well as various measures of network connectivity such as indegree, hub score, and authority score to examine the prominence of individual cities in the Twitter landscape and the connection patterns between cities. Closely related to communication ties is the sentiment of tweets about other cities, which can be extracted from the text of tweets that contain geohashtags, i.e., hashtags with names of other cities. The effect of distance between cities on user sentiments towards cities will be explored. Furthermore, Quadratic Assignment Procedure (QAP) network regression will be used to build a general sociodemographic and geographic model that helps to identify which characteristics of city pairs, e.g. separation distance, or similarity in employment data or population, increase or decrease the likelihood of mentions between those cities. Findings show that distance and network size (compactness) are major determinants in communication ties between cities. City popularity, when measured by indegree, follows a power-law distribution, and is closely tied to population, GDP, or visitor numbers. Larger cities reveal a higher percentage of selfmentions than smaller cities, showing the high level of attention these metropolitan areas attract from Twitter users due to the many opportunities, events, and sights offered. Future research in the field of analysis of geotagged tweets can further extend the network regression model with new covariates.
机译:Twitter用户在旅游景点或活动的背景下提及城市,如抗议或游戏,因此在城市之间形成网络,他们推文和他们推文的城市。本研究通过分析Twitter上的城市提到的潜在网络,解决了解释为什么用户在自己的潜在网络以外的城市推文的挑战。它适用图表理论以及各种网络连接措施,如Indegree,集线器得分和权限分数,以检查Twitter景观中各个城市的突出和城市之间的连接模式。与沟通关系密切相关是关于其他城市的推文的情绪,可以从包含地质列G的文字中提取,即,具有其他城市的名称的Hashtags。将探讨城市与城市用户情绪之间的距离的影响。此外,二次分配过程(QAP)网络回归将用于构建一般的社会主旨和地理模型,有助于确定城市对的哪个特征,例如,在就业数据或人口中的分离距离,或相似性,增加或减少这些城市之间提到的可能性。调查结果表明,距离和网络尺寸(紧凑性)是城市之间通信联系的主要决定因素。城市受欢迎程度,当Indegree衡量时,遵循权法分布,并与人口,GDP或访客人数密切相关。较大的城市揭示了比较小的城市更高的自私自行性,表现出这些大都会区域从推特用户吸引的高度关注,因为提供了许多机会,活动和所提供的景点。地理衰减发布分析领域的未来研究可以通过新的协变量进一步扩展网络回归模型。

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