With the increasing trend in the topic of migration in Europe, the public is now more engaged in expressing their opinions through various platforms such as Twitter. Understanding the online discourses is therefore essential to capture the public opinion. The goal of this study is the analysis of social media platform to quantify public attitudes towards migrations and the identification of different factors causing these attitudes. The tweets spanning from 2013 to Jul-2021 in the European countries which are hosts to immigrants are collected, pre-processed, and filtered using advanced topic modeling technique. BERT-based entity linking and sentiment analysis, and attention-based hate speech detection are performed to annotate the curated tweets. Moreover, the external databases are used to identify the potential social and economic factors causing negative attitudes of the people about migration. To further promote research in the interdisciplinary fields of social science and computer science, the outcomes are integrated into a Knowledge Base (KB), i.e., MigrationsKB which significantly extends the existing models to take into account the public attitudes towards migrations and the economic indicators. This KB is made public using FAIR principles, which can be queried through SPARQL endpoint. Data dumps are made available on Zenodo.
翻译:随着欧洲移民议题的日益增长趋势,公众现在更多地参与通过Twitter等各种平台表达自己的意见。因此,了解在线言论对于捕捉公众舆论至关重要。本研究的目的是分析社交媒体平台,量化公众对移民的态度,并查明造成这些态度的不同因素。2013年至2021年,欧洲移民收容国的推文通过高级主题模型技术收集、预处理和过滤。BERT实体的链接和情绪分析,以及关注的仇恨言论检测,对批发的推文进行注释。此外,外部数据库还用来查明造成人们对移民持负面态度的潜在社会和经济因素。为了进一步促进社会科学和计算机科学跨学科领域的研究,将结果纳入一个知识库(KB),即移民KB,它大大扩展了现有模式,以考虑到公众对移民的态度和经济指标。这个KB使用FAIR原则向公众开放,可以通过SPARQL端点对这些原则进行查询。数据倾弃场是可用的。