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Social big data analysis of future signals for bullying in South Korea: Application of general strain theory

机译:韩国欺凌未来信号的社会大数据分析:一般应变理论的应用

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The utilization of traditional social survey data to address today's bullying problems presents some limitations. In response, a new method to investigate and subsequently intervene is warranted. Therefore, this study analyzed big data generated by social media to identify Future Signals of bullying. This approach may contribute to effectively clarifying the problem and suggesting targeted interventions to address the bullying phenomenon in South Korea. For social big data analysis, 350,314 web documents were collected per hour each day from January 1, 2013 to June 30, 2017, from 279 subject channels based on an ontology of bullying-related topics. Term frequency, document frequency, degree of visibility, and degree of diffusion were computed to identify Future Signals. A substantial overlap of findings between studies based on social big data and traditional survey results was observed for family (e.g., parental divorce, domestic violence, child abuse), peer (e.g., transfer, friend violence), economic (e.g., economic problem), and school/academic (e.g., academic record, school control, academic stress) strain domains, whereas strains concerning the media (e. g., movie, celebrity) and cultural (e.g., materialism, hell Korea) domains seemed to be more salient in social big data. Weak Signal topics in social big data representing media and cultural strain domains (e.g., Youtube, class society, bullying culture) related to the bullying phenomenon appear to be emerging in significance. These topics and their respective strain domains represent potentially important new areas that warrant further investigation by practitioners and policymakers. These findings may allow the early detection of crucial information by providing data to support better informed insight and intervention related to the complex problem of bullying in South Korea.
机译:利用传统的社会调查数据来解决当今欺凌问题存在一些限制。作为响应,有保证新方法进行调查和随后进行干预。因此,本研究分析了社交媒体生成的大数据来确定欺凌的未来信号。这种方法可能有助于有效澄清问题,并提出有针对性的干预措施来解决韩国欺凌现象。对于社会大数据分析,从2013年1月1日至2017年1月1日至2017年6月30日,根据欺凌相关主题的本体,每天每天收集350,314个网络文件。术语频率,文档频率,可视性程度以及扩散程度被计算为识别未来的信号。基于社会大数据的研究与传统调查结果之间的研究结果重叠(例如,家庭离婚,家庭暴力,虐待儿童),同伴(例如,转移,朋友暴力),经济(例如,经济问题)和学校/学术(例如,学术记录,学校控制,学术压力)应变域,而有关媒体(例如电影,名人)和文化(例如唯物主义,地狱韩国)域名的群体似乎在社交方面更加突出大数据。代表媒体和文化应变域名的社会大数据中的弱信号主题(例如,Youtube,课堂社会,欺凌文化)相关的欺凌现象似乎是显着的。这些主题及其各自的应变域名代表了潜在的重要新领域,要求由从业者和政策制定者进一步调查。这些发现可以通过提供数据来提前检测至关重要的信息,以支持与韩国欺凌的复杂问题有关的更好的知情洞察力和干预。

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