This paper is published in Volume-7, Issue-3, 2021
Area
Computer Science
Author
Pooja B.
Org/Univ
RV College of Engineering, Bengaluru, Karnataka, India
Pub. Date
21 June, 2021
Paper ID
V7I3-1996
Publisher
Keywords
Covid 19, LDA, Facebook

Citationsacebook

IEEE
Pooja B.. Quantifying COVID-19 content in the Online Health Opinion using Machine Learning, International Journal of Advance Research, Ideas and Innovations in Technology, www.IJARIIT.com.

APA
Pooja B. (2021). Quantifying COVID-19 content in the Online Health Opinion using Machine Learning. International Journal of Advance Research, Ideas and Innovations in Technology, 7(3) www.IJARIIT.com.

MLA
Pooja B.. "Quantifying COVID-19 content in the Online Health Opinion using Machine Learning." International Journal of Advance Research, Ideas and Innovations in Technology 7.3 (2021). www.IJARIIT.com.

Abstract

A large proportion of the potentially harmful lies in COVID-19 appear to be in web AI to explore things among the online enemies of the development of prosperity, clear objectives ('' anti-vax ''). We track that the counter-vax counter that develops a smaller dose of COVID-19-less than its counterpart, the strength of the vaccine ('' vax- ready '') area. Regardless, the location of the counter vax range is wide, so it can draw a wide range of people looking for the COVID-19 theme on the web, for example people who are aware of the required inoculation of COVID-19 or those looking for optional adjustments. After that the local counter vax is better designed to attract new and ongoing help than good vax neighbors. This is disturbing as the lack of a complete collection of COVID-19 neutralizer would mean that the world is in short supply in terms of providing security of integration, leaving countries open to future COVID-19 renewal. We provide a model of negligence that interprets these outcomes and can help to study the rational skills of the intervention approach. Our approach works in many ways and therefore deals with the serious problem facing the establishment of electronic media for researching large volumes of web duplication of success