Comparing Supervised & Unsupervised ML for Fake News Detection - Softcover

Kaur, Sufanpreet; Ranjan, Sandeep

 
9786208116224: Comparing Supervised & Unsupervised ML for Fake News Detection

Inhaltsangabe

This investigation aims to develop a robust framework for detecting false information by comparing supervised and unsupervised machine learning algorithms. Unsupervised algorithms identify patterns without pre-labeled data, while supervised algorithms use labeled datasets to guide detection. The evaluation focuses on accuracy, precision, recall, and F1 score to assess each algorithm's effectiveness. The study details dataset composition, preprocessing techniques, and the strengths and limitations of each method. It utilizes Kaggle's dataset, featuring various news stories classified through meticulous verification, including real, fraudulent, and mixed authenticity levels. This research emphasizes the importance of precise labeling and preprocessing, aiming to enhance the development of effective fake news detection systems using advanced machine learning and natural language processing techniques.

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Über die Autorin bzw. den Autor

I'm Sufanpreet, an Assistant Professor at LPU in the Artificial Intelligence Department, with a strong focus on machine learning. My role involves teaching, mentoring, and researching in this dynamic field, which fuels my passion for exploring new algorithms and applications.

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