Time series analysis of sentiment: A comparison of the US and UK Coronavirus subreddits

Martyn Harris, M. Levene, Andrius Mudinas
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Abstract

In this paper, we investigate the dynamics of the social media response on Reddit to the COVID-19 pandemic during its first year (February 2020-2021). The emergence of region-specific subreddits allows us to compare the reactions of individuals posting their opinions on social media about the global pandemic from two perspectives - the UK and the US.In particular, we look at the volume of posts and comments on these two subreddits, and at the sentiment expressed in these posts and comments over time as a measure of the public level of engagement and response. Whilst an analysis of volume allows us to quantify how interested people are about the pandemic as it unfolds, sentiment analysis goes beyond this and informs us about how people respond towards the pandemic based on the textual content in the posts and comments. The research looks to develop a framework for analyzing the social response on Reddit to a large-scale event in terms of the level of engagement measured through post and comment volumes, and opinion measured through an analysis of sentiment applied to the post content. In order to compare the subreddits, we show the trend in the time series through the application of moving average methods. We also show how to identify the lag between time series and align them using cross-correlation. Moreover, once aligned, we apply moving correlations to the time series to measure their degree of correspondence to see if there is a similar response to the pandemic across the two groups (UK and US). The results indicate that both subreddits were posting in high volumes at specific points during the pandemic, and that, despite the generally negative sentiment in the posts and comments, a gradual decrease in negativity leading up to the start of 2021 is observed as measures are put in place by governments and organizations to contain the virus and provide necessary support the affected populations.
情绪的时间序列分析:美国和英国冠状病毒子reddit的比较
在本文中,我们调查了社交媒体Reddit对2019冠状病毒病大流行第一年(2020年2月至2021年)的反应动态。特定地区的子reddit的出现使我们能够从两个角度(英国和美国)比较个人在社交媒体上发布他们对全球大流行的看法的反应。特别地,我们观察了这两个子版块上的帖子和评论的数量,以及随着时间的推移,这些帖子和评论中表达的情绪,以此来衡量公众参与和回应的程度。虽然对数量的分析使我们能够量化人们对疫情发展的兴趣程度,但情绪分析超越了这一点,并根据帖子和评论中的文本内容告诉我们人们如何应对疫情。该研究旨在开发一个框架,用于分析Reddit上对大型事件的社会反应,通过帖子和评论量来衡量参与度,通过对帖子内容的情感分析来衡量意见。为了比较子reddits,我们通过应用移动平均方法来显示时间序列的趋势。我们还展示了如何识别时间序列之间的滞后,并使用相互关系对它们进行对齐。此外,一旦对齐,我们将移动相关性应用于时间序列,以衡量它们的对应程度,以查看两组(英国和美国)对大流行是否有类似的反应。结果表明,在大流行期间的特定时间点,这两个子区都发布了大量帖子,尽管帖子和评论中普遍存在负面情绪,但随着政府和组织采取措施遏制病毒并为受影响人群提供必要的支持,到2021年初,负面情绪逐渐减少。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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