Fake News Identification for Web Scrapped Data

Authors

  • Yashwanth M
  • Laxmi B Rananavare

DOI:

https://doi.org/10.17762/jaz.v44iS6.2329

Keywords:

Fake News Detection, TF-IDF, Classification, Passive Aggressive Classifier, Machine Learning, Web Scrapping

Abstract

Majority of the people get affected with misleading stories spread through different posts on social media and forward them assuming that it is a fact. Nowadays, Social media is used as a weapon to create havoc in the society by spreading fake news. Such havoc can be controlled by using machine-learning algorithms. Various methods of machine learning and deep learning techniques are used to identify false stories. There is a need for identification and controlling of fake news posts that have increased in alarming rate. Here we use Passive-Aggressive Classifier for fake news identification. Two datasets, Kaggle fake news dataset and as well as dynamically web scrapped dataset from politifact.com website. We achieved 88.66% accuracy using Passive Aggressive Classifier.

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Published

2023-11-30

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