JOURNAL ARTICLE

Fake News Detection Using Optimized Convolutional Neural Network and Bidirectional Long Short-Term Memory

Winda Kurnia SariIman Saladin B. AzharZaqqi YamaniYesinta Florensia

Year: 2024 Journal:   Computer Engineering and Applications Journal Vol: 13 (3)Pages: 25-33   Publisher: Sriwijaya University

Abstract

The spread of fake news in the digital age threatens the integrity of online information, influences public opinion, and creates confusion. This study developed and tested a fake news detection model using an enhanced CNN-BiLSTM architecture with GloVe word embedding techniques. The WELFake dataset comprising 72,000 samples was used, with training and testing data ratios of 90:10, 80:20, and 70:30. Preprocessing involved GloVe 100-dimensional word embedding, tokenization, and stopword removal. The CNN-BiLSTM model was optimized with hyperparameter tuning, achieving an accuracy of 96%. A larger training data ratio demonstrated better performance. Results indicate the effectiveness of this model in distinguishing fake news from real news. This study shows that the CNN-BiLSTM architecture with GloVe embedding can achieve high accuracy in fake news detection, with recommendations for further research to explore preprocessing techniques and alternative model architectures for further improvement.

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Topics

Misinformation and Its Impacts
Social Sciences →  Social Sciences →  Sociology and Political Science
Advanced Malware Detection Techniques
Physical Sciences →  Computer Science →  Signal Processing
Spam and Phishing Detection
Physical Sciences →  Computer Science →  Information Systems
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