Multilingual topic modeling for tracking COVID-19 trends based on Facebook data analysis

被引:0
作者
Amina Amara
Mohamed Ali Hadj Taieb
Mohamed Ben Aouicha
机构
[1] Multimedia,Faculty of Sciences
[2] InfoRmation systems and Advanced Computing Laboratory,undefined
[3] University of Sfax,undefined
[4] University of Sfax,undefined
来源
Applied Intelligence | 2021年 / 51卷
关键词
Social media analysis; Covid-19; Topic modeling; Facebook; Data visualization; Multilingual;
D O I
暂无
中图分类号
学科分类号
摘要
Social data has shown important role in tracking, monitoring and risk management of disasters. Indeed, several works focused on the benefits of social data analysis for the healthcare practices and curing domain. Similarly, these data are exploited now for tracking the COVID-19 pandemic but the majority of works exploited Twitter as source. In this paper, we choose to exploit Facebook, rarely used, for tracking the evolution of COVID-19 related trends. In fact, a multilingual dataset covering 7 languages (English (EN), Arabic (AR), Spanish (ES), Italian (IT), German (DE), French (FR) and Japanese (JP)) is extracted from Facebook public posts. The proposal is an analytics process including a data gathering step, pre-processing, LDA-based topic modeling and presentation module using graph structure. Data analysing covers the duration spanned from January 1st, 2020 to May 15, 2020 divided on three periods in cumulative way: first period January-February, second period March-April and the last one to 15 May. The results showed that the extracted topics correspond to the chronological development of what has been circulated around the pandemic and the measures that have been taken according to the various languages under discussion representing several countries.
引用
收藏
页码:3052 / 3073
页数:21
相关论文
共 70 条
[1]  
Sebei H(2018)Review of social media analytics process and big data pipeline, Social Netw Analys Mining 8 30:1-30:28
[2]  
Taieb MAH(2015)Using analytics and social media for monitoring and mitigation of social disasters, Procedia Engineering 107 325-334
[3]  
Aouicha MB(2012)Utilization of social media in the east japan earthquake and tsunami and its effectiveness Journal of Natural Disaster Science 34 3-18
[4]  
Teodorescu H-N(2020)Adverse drug event detection and extraction from open data: A deep learning approach Information Processing and Management 57 102-131
[5]  
PEARY B(2020)Healthcare practitioners’ views of social media as an educational resource PLOS ONE 15 1-16
[6]  
Shaw R(2010)Social media and participatory risk communication during the h1n1 flu epidemic: A comparative study China Media Research 6 80-91
[7]  
TAKEUCHI Y(2017)Zika virus pandemic—analysis of facebook as a social media health information platform American Journal of Infection Control 45 301-302
[8]  
Fan B(2018)Twitter rumour detection in the health domain Expert Systems with Applications 110 33-40
[9]  
Fan W(2020)Sentiment analysis of nationwide lockdown due to covid 19 outbreak: Evidence from india Asian Journal of Psychiatry 51 102-089
[10]  
Smith C(2020)Characterizing the propagation of situational information in social media during covid-19 epidemic: A case study on weibo IEEE Transactions on Computational Social Systems PP 1-7