Fake News Detection Using Machine Learning Technique
Authors: Dammavalam Srinivasa Rao, N. Rajasekhar, D. Sowmya, D. Archana, T. Hareesha and S. Sravya
Publishing Date: 21-09-2021
ISBN: 978-93-91842-08-6
Abstract
People got to know about the world from newspapers to today’s digital media.From 1605 to 2021 the topography of news has evolved at an immense. People forgotten about newspapers and habituated to digital devices so that they can view it at anytime and anywhere soon it became a crucial asset for people. From the past few years fake news also evolved and people always being believed by the available fake news who are being shared by fake profiles in digital media. Currently numerous approaches for detecting fake news by neural networks in one-directional model. We proposed BERT- Bidirectional Encoder Representations from Transformers is the bidirectional model where it uses left and right content in each word so that it is used for pre-train the words into two-way representations from unlabeled words it shown an excellent result when dealt with fake news it attained 99% of accuracy and outperform logistic regression and K-Nearest Neighbors. This method became a crucial in dealing with fake news so that it improves categorization easily and reduces computation time. Through this proposal, we are aiming to build a model to spot fake news present across various sites. The motivation behind this work to help people improve the consumption of legitimate news while discarding misleading information relationship in social media. Classification accuracy of fake news may be improved from the utilization of machine learning ensemble methods.
Keywords
Logistic Regression; K-Nearest Neighbors Term Frequency-Inverted Document Frequency (TF-IDF); DeepNeural Networks; Bidirectional Encoder Representations from Transformers (BERT)
Cite as
Dammavalam Srinivasa Rao, N. Rajasekhar, D. Sowmya, D. Archana, T. Hareesha and S. Sravya, "Fake News Detection Using Machine Learning Technique", In: Raju Pal and Praveen Kumar Shukla (eds), SCRS Conference Proceedings on Intelligent Systems, SCRS, India, 2021, pp. 59-69. https://doi.org/10.52458/978-93-91842-08-6-5