The IRMA Community
Newsletters
Research IRM
Click a keyword to search titles using our InfoSci-OnDemand powered search:
|
A Comprehensive Exploration of Mathematical Models and Machine Learning Techniques for COVID-19
|
|
Author(s): Geeta Arora (Lovely Professional University, India), Tashi Lhamo (Lovely Professional University, India)and Sarabjit Singh (Punjab Institute of Medical Sciences, India)
Copyright: 2024
Pages: 27
Source title:
Exploring Medical Statistics: Biostatistics, Clinical Trials, and Epidemiology
Source Author(s)/Editor(s): Geeta Arora (Lovely Professional University, India), Sarabjit Singh (Punjab Institute of Medical Sciences, India)and Homan Emadifar (Islamic Azad University, Iran)
DOI: 10.4018/979-8-3693-2655-8.ch001
Purchase
|
Abstract
Mathematical modeling has proved to be useful in predicting the spread of infectious diseases and assessing the dynamical behavior of contagious diseases, including COVID-19. Various models aid in forecasting COVID-19 spread, such as SEIR (Susceptible – Exposed – Infected – Recovered), SIR (Susceptible – Infected – Recovered), SIRD (Susceptible – Infected – Recovered – Death), and SIRVD (Susceptible – Infected – Recovered – Vaccinated – Death). With recent technological advancements, forecasting of COVID-19 can also be done using machine learning techniques such as SVM (support vector machine), decision tree, random forest, and linear regression. This chapter delves into the various mathematical models and provides simulations using Python and machine learning techniques for COVID-19. These simulations provide essential insights into the spread of infectious diseases and evaluate which machine learning algorithm performs better using evaluation metrics.
Related Content
|
Usharani Bhimavarapu.
© 2026.
30 pages.
|
|
Jasvir Kaur.
© 2026.
24 pages.
|
|
Nida Fatimah, K. Jayashree.
© 2026.
30 pages.
|
|
Kirti Rani, Simranjit Kaur.
© 2026.
24 pages.
|
|
Usharani Bhimavarapu.
© 2026.
26 pages.
|
|
Piali Haldar, Dev Kumar Mandal, Utkarsh Gupta.
© 2026.
32 pages.
|
|
Rachit Agarwal, Tanya Kumar, Shraddha Rawat, Harpreet Kaur.
© 2026.
28 pages.
|
|
|