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Malware Detection System Using Natural Language Processing Based on Website Links
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Malware Detection System Using Natural Language Processing Based on Website Links

Lare Adeola and Celestine Iwendi
2024 International Conference on Advances in Computing Research on Science Engineering and Technology (ACROSET)
International Conference on Advances in Computing Research on Science Engineering and Technology (ACROSET 2024) (Indore, India, 27/09/2024–28/09/2024)
12/11/2024

Abstract

Index Terms—Applied Machine learning Natural Language Processing Artificial Intelligence Cyber-Security
Various approaches exist when building a detection model to capture Cyber-Threats but most of this approaches employ a post-active methodology-trying to detect the threats after they have occurred. We aimed to develop a model that would employ a pro-active approach by understanding the semantic and linguistic nature of their source of origin-urls and from there building a classifier that can identify potential threats. Our Decision Tree classifier achieved an accuracy of 95% on the test set showing its potential to detect cyber-threats in real life scenarios. And since our model uses a classical algorithm as opposed to deep learning methods, our model would be computationally less expensive and lightweight making it easy to deploy in real world web applications.
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