Fake News Detection based on Machine Learning Algorithm with Performance Improvement

  • Dr.Akash Saxena, Gaurav kumar Das, Kajal Singh
Keywords: Machine Learning, Fake News, KNN, DT, NB, SVM, Python.

Abstract

News is crucial part of our life. In everyday life current news are useful to improve information what occur all throughout the planet. So the greater part of people groups favor watching news the vast majority of the people groups by and large incline toward perusing paper promptly in the first part of the day getting a charge out of with cup of tea. In the event that news is phony that will delude people groups here and there counterfeit word used to get out reports about things or it will influence some political pioneer positions in view of phony news. So it's vital to track down the phony news. This exploration proposed a streamlined framework to identify counterfeit news, yet now daily's information on web or web-based media is expanding unfathomably and it is so chaotic to distinguish news is phony or not by looking all information and it is tedious so we use grouping procedures to arrange tremendous information. This paper proposed fake news detection system based on the classification approach such as Naïve bayes (NB), Support vector machine (SVM), K Nearest Neighbor (KNN) and Decision Tree (DT).

Published
2021-09-23
How to Cite
Kajal Singh, D. S. G. kumar D. (2021). Fake News Detection based on Machine Learning Algorithm with Performance Improvement . Design Engineering, 13457-13467. Retrieved from http://www.thedesignengineering.com/index.php/DE/article/view/4609
Section
Articles