FakeDetect: Bangla fake news detection model based on different machine learning classifiers
Date
2021-06Publisher
Brac UniversityAuthor
Sraboni, TasnubaUddin, Md. Rifat
Shahriar, Fahim
Rizon, Ruhit Ahmed
Polock, Shakib Ibna Shameem
Metadata
Show full item recordAbstract
Information is power although fake information can have severe consequences when
it gets viral. Living in the era of social media is like always getting influenced
by the news of the online world even though it is fake. Moreover, online news
portals and social media are becoming standardized for consuming information. It
is effortless to spread fake news using these mediums. Fake news is represented as
authentic news with the wrapping of inaccurate information. In recent times, the
rate of lynching has increased because of the spread of fake news. Besides, COVID19 related false information is affecting people by creating chaos and spreading
panic worldwide. Some fake news automation systems exist to tackle this problem.
However, they are largely developed for English. There are hundreds of millions of
people who speak Bangla worldwide. In this work, we propose a model that can
favorably detect fake news in Bangla. We have applied some pre-processing and
feature extraction techniques to our dataset. Experimental analysis on real-world
data demonstrates that Passive Aggressive Classifier and Support Vector Machine
achieves 93.8% and 93.5% accuracy respectively which are higher than the other
Machine Learning classifiers.