The rapid spread of fake news through digital channels is a major problem. In this study, after processing the texts with natural language processing techniques, machine learning methods and deep learning methods, the style-based detection of fake news was investigated with text analysis. After the necessary text processing on the open-source dataset ISOT, different models were built using word representations (TF-IDF, word2Vec) and different machine learning (K nearest neighbor Naïve Bayes, logistic regression) and deep learning Long Short-Term Memory (LSTM) methods. Acc, P, R and F were used to evaluate the performance of these models. On the fake news dataset, the LSTM model performed best with 99.2% Acc. Improving state-of-the-art methods on word representations and classification steps, including preprocessing in text classification processes, and making them usable in a practical environment can significantly reduce the amount of fake news.
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| Primary Language | English |
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| Subjects | Deep Learning, Natural Language Processing |
| Journal Section | Research Article |
| Authors | |
| Project Number | yok |
| Publication Date | June 28, 2024 |
| Submission Date | April 17, 2024 |
| Acceptance Date | June 3, 2024 |
| Published in Issue | Year 2024 Volume: 4 Issue: 1 |
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