Shi Xiaochuan, Jia Miaoyutian, Li Jia, Chen Quiyi, Liu Guan, Liu Qian
School of Cyber Science and Engineering, Wuhan University, Wuhan, China.
School of Journalism and Communication, Jinan University, Guangzhou, China.
Front Psychol. 2022 Jun 28;13:944049. doi: 10.3389/fpsyg.2022.944049. eCollection 2022.
Conducting emotion analysis and generating users' feedback from social media platforms may help understand their emotional responses to video products, such as a documentary on the lockdown of Wuhan during COVID-19. The results of emotion analysis could be used to make further user recommendations for marketing purposes. In our study, we try to understand how users respond to a documentary through YouTube comments. We chose "The lockdown: One month in Wuhan" YouTube documentary, and applied emotion analysis as well as a machine learning approach to the comments. We first cleaned the data and then introduced an emotion analysis based on the statistical characteristics and lexicon combination. After that, we applied the Latent Dirichlet Allocation (LDA) topic modeling approach to further generate main topics with keywords from the comments and visualized the distribution by visualizing the topics. The result shows trust (22.8%), joy (15.4%), and anticipation (17.6%) are the most prominent emotions dominating the comments. The major three themes, which account for 70% of all comments, are discussing stories about fighting against the virus, medical workers being heroes, and medical workers being respected. Further discussion has been conducted on the changing of different sentiments over time for the ongoing health crisis. This study proves that emotion analysis and LDA topic modeling could be used to generate explanations of users' opinions and feelings about video products, which could support user recommendations in marketing.
从社交媒体平台进行情感分析并生成用户反馈,可能有助于了解他们对视频产品的情感反应,比如一部关于新冠疫情期间武汉封城的纪录片。情感分析的结果可用于出于营销目的进行进一步的用户推荐。在我们的研究中,我们试图通过YouTube评论来了解用户对一部纪录片的反应。我们选择了YouTube纪录片《封城:武汉的一个月》,并对评论应用了情感分析以及机器学习方法。我们首先清理数据,然后基于统计特征和词汇组合引入了情感分析。之后,我们应用潜在狄利克雷分配(LDA)主题建模方法,从评论中进一步生成带有关键词的主要主题,并通过可视化主题来呈现分布情况。结果显示,信任(22.8%)、喜悦(15.4%)和期待(17.6%)是主导评论的最突出情感。占所有评论70%的三大主要主题是讨论抗击病毒的故事、医护人员成为英雄以及医护人员受到尊重。针对当前健康危机中不同情绪随时间的变化进行了进一步讨论。这项研究证明,情感分析和LDA主题建模可用于生成对用户关于视频产品的意见和感受的解释,这可为营销中的用户推荐提供支持。