Author:
Wankhede Mrs. Disha Sushant, ,Sadawarte Rohan Rajendra,Mulla Mahek Ibrahim,Jadhav Shreya Rahul, , ,
Abstract
Predicting the rise or fall of an epidemic or pandemic is an essential part of establishing control over it. Post-World War 1, when there was an outbreak of the “Black Plague” there weren’t any means to analyze and predict. Although today we are equipped with tools like Machine Learning and Artificial Intelligence which have certainly enabled us to prevent unnecessary loss of life. It helps prepare the health officials to build the infrastructure and interpret the intensity of preparedness regulation of resources. The aim of this survey is to analyze and shed some light on the various algorithms and methods such as - regression models, neural networks, ARIMA, etc. Before building any model, gathering and processing the data is also essential. Hence our paper also focuses on which social media platforms proved beneficial in comparison to all we found and then made fit to be incorporated into the models. While researching for this paper, we observed that every disease has a different transmission type that leads to an outbreak and is a key factor in constructing a model. The literature evaluation in this work is centered on various prediction algorithms and their strategies for extracting online data from social media sites like Facebook and Twitter, all of which have drawn a lot of interest in early disease diagnosis for public health.
Publisher
Blue Eyes Intelligence Engineering and Sciences Engineering and Sciences Publication - BEIESP
Subject
Management of Technology and Innovation,General Engineering
Reference48 articles.
1. Sujin Bae, Eunyoung (Christine) Sung & Ohbyung Kwon (2021), Accounting for social media effects to improve the accuracy of infection models: combatting the COVID-19 pandemic and infodemic, European Journal of Information Systems
2. Elaine O. Nsoesie1*, Olubusola Oladeji1, Aristide S.AbahAbah 2 & Martial L. Ndefo‑Mbah(2021), Forecasting influenza‑like illness trends in Cameroon using Google Search Data, Scientific Reports [CrossRef]
3. Mat'ıas N'u˜nez,1, 2, 3 Nadia L. Barreiro,4 Rafael A. Barrio,5 and Christopher Rackauckas (2021), Forecasting virus outbreaks with social media data via neural ordinary differential equations, medRxiv
4. Beakcheol Jang, Ph.D.; Inhwan Kim, BSc; Jong Wook Kim2, Ph.D. (2021), Effective Training Data Extraction Method to Improve Influenza Outbreak Prediction from Online News Articles: Deep Learning Model Study, Jmir Medical Informatics
5. Samira Yousefinaghani, Rozita Dara, Samira Mubareka and Shayan Sharif 3 (2021), Prediction of COVID-19 Waves Using social media and Google Search: A Case Study of the US and Canada, Frontiers [CrossRef]