An Enhanced Fake News Detection System With Fuzzy Deep Learning

Authors

  • Nsrk Prasad, G.Sandeep Assistant Professor, Department Of IT, Guru Nanak Institutions Technical Campus (Autonomous), India. Author
  • T. Sumanth Kumar B.Tech Students, Department Of IT, Guru Nanak Institutions Technical Campus (Autonomous), India Author
  • Y.Mallikarjun B.Tech Students, Department Of IT, Guru Nanak Institutions Technical Campus (Autonomous), India Author

DOI:

https://doi.org/10.62647/IJITCE2025V13I2PP1301-1305

Keywords:

LSTM, LIAR, NLP

Abstract

Addressing the intricate challenge of fake news detection, traditionally reliant on the expertise of professional fact-checkers due to the inherent uncertainty in fact-checking processes, this research leverages advancements in language models to propose a novel Long Short-Term Memory (LSTM)-based network. The proposed model is specifically tailored to navigate the uncertainty inherent in the fake news detection task, utilizing LSTM's capability to capture long-range dependencies in textual data. The evaluation is conducted on the well-established LIAR dataset, a prominent benchmark for fake news detection research, yielding an impressive accuracy of 99%. Moreover, recognizing the limitations of the LIAR dataset, we introduce LIAR2 as a new benchmark, incorporating valuable insights from the academic community. Our study presents detailed comparisons and ablation experiments on both LIAR and LIAR2 datasets, establishing our results as the baseline for LIAR2. The proposed approach aims to enhance our understanding of dataset characteristics, contributing to refining and improving fake news detection methodologies by effectively leveraging the strengths of LSTM architecture.

 

Email ID: mallikarjunyerra969@gmail.com 

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Published

09-06-2025

How to Cite

An Enhanced Fake News Detection System With Fuzzy Deep Learning. (2025). International Journal of Information Technology and Computer Engineering, 13(2), 1301-1305. https://doi.org/10.62647/IJITCE2025V13I2PP1301-1305