School of Public Health, SRM Institute of Science and Technology, Chennai, Tamil Nadu, 603203, India.
Centre for Statistics, SRM Institute of Science and Technology, Chennai, Tamil Nadu, 603203, India.
Int J Health Geogr. 2020 May 28;19(1):19. doi: 10.1186/s12942-020-00214-4.
Natural disasters are known to take their psychological toll immediately, and over the long term, on those living through them. Messages posted on Twitter provide an insight into the state of mind of citizens affected by such disasters and provide useful data on the emotional impact on groups of people. In 2015, Chennai, the capital city of Tamil Nadu state in southern India, experienced unprecedented flooding, which subsequently triggered economic losses and had considerable psychological impact on citizens. The objectives of this study are to (i) mine posts to Twitter to extract negative emotions of those posting tweets before, during and after the floods; (ii) examine the spatial and temporal variations of negative emotions across Chennai city via tweets; and (iii) analyse associations in the posts between the emotions observed before, during and after the disaster.
Using Twitter's application programming interface, tweets posted at the time of floods were aggregated for detailed categorisation and analysis. The different emotions were extracted and classified by using the National Research Council emotion lexicon. Both an analysis of variance (ANOVA) and mixed-effect analysis were performed to assess the temporal variations in negative emotion rates. Global and local Moran's I statistic were used to understand the spatial distribution and clusters of negative emotions across the Chennai region. Spatial regression was used to analyse over time the association in negative emotion rates from the tweets.
In the 5696 tweets analysed around the time of the floods, negative emotions were in evidence 17.02% before, 29.45% during and 11.39% after the floods. The rates of negative emotions showed significant variation between tweets sent before, during and after the disaster. Negative emotions were highest at the time of disaster's peak and reduced considerably post disaster in all wards of Chennai. Spatial clusters of wards with high negative emotion rates were identified.
Spatial analysis of emotions expressed on Twitter during disasters helps to identify geographic areas with high negative emotions and areas needing immediate emotional support. Analysing emotions temporally provides insight into early identification of mental health issues, and their consequences, for those affected by disasters.
众所周知,自然灾害会对受灾民众造成即时和长期的心理影响。在 Twitter 上发布的信息可以洞察到受灾民众的心理状态,并为群体情绪的情感影响提供有用的数据。2015 年,印度南部泰米尔纳德邦首府钦奈遭遇了前所未有的洪水,随后引发了经济损失,并对市民造成了相当大的心理影响。本研究的目的是:(i)挖掘 Twitter 上的帖子,以提取洪水前、期间和之后发布推文者的负面情绪;(ii)通过推文检查钦奈市负面情绪的时空变化;(iii)分析灾难前后帖子中观察到的情绪之间的关联。
使用 Twitter 的应用程序接口,汇总了洪水期间发布的推文,以进行详细分类和分析。使用国家研究委员会情绪词典提取和分类不同的情绪。通过方差分析(ANOVA)和混合效应分析来评估负面情绪率的时间变化。全局和局部 Moran's I 统计用于了解钦奈地区负面情绪的空间分布和聚类。时空回归用于分析随着时间的推移,推文负面情绪率的关联。
在分析的 5696 条洪水期间的推文中,洪水前有 17.02%的负面情绪,洪水中有 29.45%,洪灾后有 11.39%。灾难前、期间和后的推文发送中负面情绪率存在显著差异。灾难高峰期的负面情绪最高,在钦奈的所有行政区,灾难后负面情绪都大大降低。确定了具有高负面情绪率的行政区的空间聚类。
对灾难期间在 Twitter 上表达的情绪进行空间分析有助于识别具有高负面情绪的地理区域和需要立即获得情感支持的区域。对情绪进行时间分析可以深入了解受灾人群心理健康问题的早期识别及其后果。