利用Twitter对印度少女进行网络欺凌的心理学研究

Kavya Sharma, Krishna Kumar Singh
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引用次数: 0

摘要

由于学生数字活动的增加以及社交媒体的增加,缺乏对平台的监管导致了另一种形式的欺凌,即俗称的网络欺凌。网络欺凌是全国学校中最普遍的不良问题之一。网络欺凌是指发生在任何网络接口或电子平台上的欺凌行为。这是一项对受害者身心健康产生重大影响的活动。随着保密性的提高,由于当今可用的信息技术基础设施,网络欺凌的频率和传播仍然很高。通过使用合适的机器学习算法,了解网络欺凌趋势并加以预防,可以帮助众多学生过上更好的生活,做出更好的决策,从而帮助他们成长为有能力的未来领导者。因此,作者本研究论文的目的是关注青春期女孩使用各种工具和技术,如文本分析和图像分析。本文以网民为样本进行研究。进行分析的地点是新德里,真实世界的数据是从Twitter上提取的英文数据。使用适当的数据挖掘算法提取真实世界的数据,以发现隐藏的模式,然后进行所需的分析,以了解女孩和男孩的心理以及推文/帖子的音调和声音。这是通过平台(Twitter)上用户的推文提供的开源信息完成的。几乎没有偏见,因为整个过程可以自动化;因此,tweet将根据数据进行过滤或标记。这种方法使人们能够获得无偏数据。在这种情况下,偏见可以被定义为行为上的偏见和从参与者那里得到的反应。然后用极性和主观性分析结果。了解心理学和人格特征有助于从收集到的表情中获得见解。作者将使用词法和语法的方法研究样例的简历、点赞和评论。提取6000条最热门的推文,并选取极性和主观性值最高的15条推文进行进一步分析。这些推文是根据一个焦点小组的16个回复过滤出来的,该小组过滤了20个最受欢迎的亵渎词。由于数据是使用Twitter(即次要数据源)提取的,因此作者解决了当前心理分析中的差距。在这样的研究中,人们通常会分发问卷来了解参与者,但是,对于这项研究,作者将研究数据而不让有关个人发挥作用,从而消除了人为偏见,这是通过问卷收集回应的一个重要限制。进一步简化模型的空间增加了。这些推论包括理解社交媒体平台的监管,平台上的攻击性程度,以及区分这种攻击性的人的努力。
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Psychological Study of Cyber-Bullying Against Adolescent Girls in India Using Twitter
Due to the rise in digital activity of students as well as increased social media presence, the lack of regulation of platforms has given rise to another form of bullying, popularly known as cyberbullying. Cyberbullying is one of the most adverse issues prevalent in schools nationwide. Cyberbullying refers to bullying that happens over any web-interfaced or electronic platform. It is an activity that significantly affects the mental and physical health of its victims. With increased secrecy, the frequency and propagation of cyberbullying remain high due to the information technology infrastructure available today. Understanding cyberbullying trends and preventing them, using suitable machine learning algorithms, could help numerous school students lead better lives, as well as make better decisions, which help them grow and flourish into capable future leaders. Hence, the authors' aim for this research paper is to focus on adolescent girls using various tools and techniques like text analytics and image analytics. For this paper, the authors study a sample of netizens. The location where the analysis is conducted is New Delhi, and the real-world data is extracted from Twitter in English. The real-world data is extracted using appropriate data mining algorithms to find hidden patterns and then conduct the analyses required to understand the psychology of girls and boys and the tonality and voice of the tweets/posts. This is done from the open-source information available on the platform (Twitter) from tweets by the users. There is little to no bias as the entire process can be automated; hence, tweets will be filtered or flagged based on data. Such a method allows one to get access to unbiased data. Bias, in this case, can be defined as prejudice in action and response received from a participant. The results are then analysed using polarity and subjectivity. Understanding psychology and personality traits helps in drawing insights from the expressions collected. The authors will be studying the sample bios, likes, and comments of the sample using a lexical and syntactical approach. Six thousand top tweets are extracted, and the 15 tweets which score the highest on polarity and subjectivity values are taken for further analysis. The tweets are filtered based on 16 responses from a focus group filtering the 20 most popular profane words. Since the data is extracted using Twitter (i.e., a secondary data source), the authors address the gap in current psychological analyses. In such studies, one usually circulates questionnaires to understand the participant, but, for this research though, the authors will be studying the data without bringing the concerned individual into play, thereby eliminating the human bias, which is a significant limitation of gathering responses through a questionnaire. There is increased scope for further streamlining the model. The inferences include understanding the regulation of a social media platform, the degree of aggression on the platform, and an effort to distinguish those who cause such aggression.
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来源期刊
CiteScore
1.10
自引率
0.00%
发文量
20
期刊介绍: The mission of the International Journal of Cyber Behavior, Psychology and Learning (IJCBPL) is to identify learners’ online behavior based on the theories in human psychology, define online education phenomena as explained by the social and cognitive learning theories and principles, and interpret the complexity of cyber learning. IJCBPL offers a multi-disciplinary approach that incorporates the findings from brain research, biology, psychology, human cognition, developmental theory, sociology, motivation theory, and social behavior. This journal welcomes both quantitative and qualitative studies using experimental design, as well as ethnographic methods to understand the dynamics of cyber learning. Impacting multiple areas of research and practices, including secondary and higher education, professional training, Web-based design and development, media learning, adolescent education, school and community, and social communication, IJCBPL targets school teachers, counselors, researchers, and online designers.
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