论文标题
深度学习揭示了基于1100万条推文的多种多样的情感模式和不断变化的情绪
Deep Learning Reveals Patterns of Diverse and Changing Sentiments Towards COVID-19 Vaccines Based on 11 Million Tweets
论文作者
论文摘要
在撰写本文时,已经服用了超过120亿剂的COVID-19-COVID疫苗。但是,公众对疫苗的看法很复杂。我们分析了COVID-19与疫苗相关的推文,以了解Covid-19疫苗的不断发展的看法。我们使用最先进的模型XLNET对深度学习分类器进行了填补,以自动检测每个推文的情感。我们采用了经过验证的方法来从用户资料中提取用户的种族或种族,性别,年龄和地理位置。结合了多个数据源,我们评估了亚种群之间的情感模式,并将其与疫苗摄取数据并列以揭示其交互式模式。 11,211,672 Covid-199在两年内与2,203,681位用户相对应的疫苗相关推文。在测试集中,用于情感分类的填充模型的精度为0.92。来自各个人口组的用户表现出对Covid-19疫苗情感的不同模式。随着时间的流逝,用户情绪变得更加积极,我们观察到随后在人口级疫苗摄取中的上升。周围的日期,我们发现了关于疫苗开发和分发的令人鼓舞的新闻或事件。与普通人群的趋势相比,与妊娠有关的推文中的积极情感表明,随着疫苗摄取趋势的延迟。跨亚群的独特模式表明需要量身定制的策略。全球新闻和事件深刻涉及在社交媒体上塑造用户的思想。由于缺乏及时的建议以来,怀孕等其他问题(例如怀孕)的人群表现出更大的犹豫。特征分析表明,各种亚群的犹豫不决源于临床试验逻辑,风险和并发症以及科学证据的紧迫性。
Over 12 billion doses of COVID-19 vaccines have been administered at the time of writing. However, public perceptions of vaccines have been complex. We analyzed COVID-19 vaccine-related tweets to understand the evolving perceptions of COVID-19 vaccines. We finetuned a deep learning classifier using a state-of-the-art model, XLNet, to detect each tweet's sentiment automatically. We employed validated methods to extract the users' race or ethnicity, gender, age, and geographical locations from user profiles. Incorporating multiple data sources, we assessed the sentiment patterns among subpopulations and juxtaposed them against vaccine uptake data to unravel their interactive patterns. 11,211,672 COVID-19 vaccine-related tweets corresponding to 2,203,681 users over two years were analyzed. The finetuned model for sentiment classification yielded an accuracy of 0.92 on testing set. Users from various demographic groups demonstrated distinct patterns in sentiments towards COVID-19 vaccines. User sentiments became more positive over time, upon which we observed subsequent upswing in the population-level vaccine uptake. Surrounding dates where positive sentiments crest, we detected encouraging news or events regarding vaccine development and distribution. Positive sentiments in pregnancy-related tweets demonstrated a delayed pattern compared with trends in general population, with postponed vaccine uptake trends. Distinctive patterns across subpopulations suggest the need of tailored strategies. Global news and events profoundly involved in shaping users' thoughts on social media. Populations with additional concerns, such as pregnancy, demonstrated more substantial hesitancy since lack of timely recommendations. Feature analysis revealed hesitancies of various subpopulations stemmed from clinical trial logics, risks and complications, and urgency of scientific evidence.