在Twitter上描绘集体空间注意力

Émilien Antoine, A. Jatowt, Shoko Wakamiya, Yukiko Kawai, Toyokazu Akiyama
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引用次数: 18

摘要

像Twitter这样的微博平台最近经常被用来检测实时事件。用户位置所反映的空间成分通常在这类系统中起关键作用。然而,一个经常被忽视的空间信息来源是推文内容中表达的位置提及。在本文中,我们展示了一种新的可视化系统,用于分析Twitter用户如何集体谈论空间,并揭示Twitter用户的地理位置与他们所发推文的位置之间的相关性。我们的探索性分析基于空间信息提取和表示模型的开发,该模型允许为大规模数据集构建有效的可视化分析框架。我们展示了基于半年长的日本推文数据集和四个月长的美国推文数据集的可视化结果。所提出的系统允许观察twitter消息的许多与空间相关的方面,包括社交媒体用户的平均空间注意力范围和空间兴趣随时间的变化。我们提供的分析框架和我们概述的发现对于来自不同研究领域的科学家以及对共享在线数据的地理和社会方面感兴趣的任何用户都是有价值的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Portraying Collective Spatial Attention in Twitter
Microblogging platforms such as Twitter have been recently frequently used for detecting real-time events. The spatial component, as reflected by user location, usually plays a key role in such systems. However, an often neglected source of spatial information are location mentions expressed in tweet contents. In this paper we demonstrate a novel visualization system for analyzing how Twitter users collectively talk about space and for uncovering correlations between geographical locations of Twitter users and the locations they tweet about. Our exploratory analysis is based on the development of a model of spatial information extraction and representation that allows building effective visual analytics framework for large scale datasets. We show visualization results based on half a year long dataset of Japanese tweets and a four months long collection of tweets from USA. The proposed system allows observing many space related aspects of tweet messages including the average scope of spatial attention of social media users and variances in spatial interest over time. The analytical framework we provide and the findings we outline can be valuable for scientists from diverse research areas and for any users interested in geographical and social aspects of shared online data.
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