Fake news is a piece of
contrived records that mirrors a news association's substance in
structure however not in hierarchical interaction or purpose. Fake news
is spreading in our society day by day. Web-based media stages permit
nearly everybody to distribute their musings or offer stories with the
world. The difficulty is, a great many people don't check the wellspring
of the material that they see online before they share it, which can
prompt phony word getting out rapidly or in any event, circulating
around the web. For this reason, we wanted to work with the detection of
fake news. Bangla fake news observation is not as easy as English. The
features of the Bangla language are comparatively different from other
languages. We use machine learning approaches like Random Forest,
Decision Tree, Naive Bayes, Support Vector Machine, K-Nearest Neighbors
classifier for detecting Bangla fake news. We have got the best accuracy
for the Random Forest Classifier. Finally, our proposed model can
recognize fake report successfully.