Prediction of influenza-like illness from twitter data and its comparison with integrated disease surveillance program data

被引:0
作者
Malik M. [1 ]
Naaz S. [1 ]
机构
[1] Department of Computer Science and Engineering, School of Engineering Sciences and Technology, Jamia Hamdard, New Delhi
来源
Lecture Notes on Data Engineering and Communications Technologies | 2021年 / 66卷
关键词
Decongestants; Flomist; H1N1; Influenza; Rapivab; Relenza; Swine flu; Tamiflu; Zanamivir;
D O I
10.1007/978-981-16-0965-7_31
中图分类号
学科分类号
摘要
The social networking sites are currently assisting in delivering faster communication and they are also very useful to know about the different people’s opinions, views, and their sentiments. Twitter is one of the social networking sites, which can help to predict many health-related problems. In this work, sentiment analysis has been performed on tweets to predict the possible number of cases with H1N1 disease. The data will be collected country wise, where the tweets lie between four ranges on which the further analysis will be done. The results show the position of India based on the frequency of occurrence in the tweets as compared to the other countries. This type of disease prediction can help to take a quick decision in order to overcome the damage. The results predicted by sentiment analysis of Twitter data will then compared with the data obtained from the ‘Ministry of Health and Family Welfare-Government of India’ site. The data present at this site gives the actual number of cases occurred and collected by Indian Governments “Integrated Disease Survellience Program”. Comparison with this data will help in calculating the accuracy of the sentiment analysis approach proposed in this work. © The Author(s), under exclusive license to Springer Nature Singapore Pte Ltd. 2021.
引用
收藏
页码:379 / 393
页数:14
相关论文
共 35 条
[1]  
Poecze F., Ebster C., Strauss C., Social media metrics and sentiment analysis to evaluate the effectiveness of social media posts, Proc Comput Sci, 130, pp. 660-666, (2018)
[2]  
McCalman J., Bainbridge R., Brown C., Tsey K., Clarke A., The aboriginal australian family wellbeing program: A historical analysis of the conditions that enabled its spread, Front Public Heal, 6, (2018)
[3]  
Amato P.R., Research on divorce: Continuing trends and new developments, J Marriage Fam, 72, 3, pp. 650-666, (2010)
[4]  
Sakaki T., Okazaki M., Matsuo Y., Earthquake shakes Twitter users: Real-time event detection by social sensors, In: Proceedings of the 19Th International Conference on World Wide Web, WWW’10, pp. 851-860, (2010)
[5]  
Prier K.W., Smith M.S., Giraud-Carrier C., Hanson C.L., Identifying health-related topics on Twitter, International Conference on Social Computing, Behavioral-Cultural Modeling, and Prediction, pp. 18-25, (2011)
[6]  
Neiger B.L., Thackeray R., Burton S.H., Thackeray C.R., Reese J.H., Use of twitter among local health departments: An analysis of information sharing, engagement, and action, J Med Internet Res, 15, 8, (2013)
[7]  
Bechmann A., Lomborg S., Dissemination of health information through social networks: Twitter and antibiotics, New Media Soc, 15, 5, pp. 765-781, (2013)
[8]  
Malik M., Habib S., Agarwal P., A novel approach to web-based review analysis using opinion mining, Proc Comput Sci, 132, pp. 1202-1209, (2018)
[9]  
Freberg K., Palenchar M.J., Veil S.R., Managing and sharing H1N1 crisis information using social media bookmarking services, Public Relat Rev, 39, 3, pp. 178-184, (2013)
[10]  
Jania V.K., Kuma S., An effective approach to track levels of influenza-A (H1N1) pandemic in India, Proc Comput Sci, 70, pp. 801-807, (2015)