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Outbound behavior analysis through social network data: A case study of Chinese people in Japan

机译:通过社交网络数据进行出站行为分析:以日本中国人为例

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Globalization leads to more and more outbound behavior. Understanding these behavior is of great significance to both outbound and inbound countries in a lot of fields. However, the previous research on outbound behavior mainly unitizes questionnaires or purely analyzes the statistical data, these data are either too difficult to acquire or unable to directly analyze public opinion. This paper aim to analyze outbound behavior through large volume of text and location information published on social network services (SNS) and look into a case study of Chinese people in Japan with the data acquired from Chinese microblog website, Sina Weibo. For text analysis, we utilize an adapted latent Dirichlet allocation model to extract the topics in text and discuss the spatial and temporal distribution of the topics. The experiment proves that the topics represent outbound behavior of tourists and foreign visitors can be found and explained in the experiment dataset, which indicates that SNS data is valid for analyzing outbound behavior.
机译:全球化导致越来越多的出境行为。了解这些行为对于许多领域的出入境国家都具有重要意义。但是,以往关于出境行为的研究主要是结合问卷或纯粹对统计数据进行分析,这些数据要么太难获得,要么无法直接分析民意。本文旨在通过在社交网络服务(SNS)上发布大量文本和位置信息来分析出站行为,并使用从中国微博网站新浪微博获取的数据对日本华人进行案例研究。对于文本分析,我们利用适应的潜在Dirichlet分配模型来提取文本中的主题,并讨论主题的时空分布。实验证明,代表游客的出境行为的主题可以在实验数据集中找到和解释,这表明SNS数据对于分析出境行为是有效的。

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