

Artificial Intelligence-Based Email Spam Filtering
Abstract
Email spamming has become a big issue in spreading unsolicited emails. This project focuses on tackling the prevalent issue of email spam through the implementation of machine learning techniques, particularly emphasizing spam filtering using artificial intelligence (AI). The goal is to develop an AI-powered application for efficient identification and filtration of spam emails. Key functionalities include email content preprocessing, feature extraction using techniques like Count Vectorization and TF-IDF Vectorization, and deploying machine learning models such as Support Vector Machines, Naive Bayes, and K-Nearest Neighbour classifiers. The results demonstrate an impressive 98.65% accuracy in recognizing spam emails. The conclusion highlights the significance of AI in spam filtering for accurate and reliable outcomes, addressing the persistent problem of email spam. This research contributes to advancing spam filtering techniques, serving as a valuable reference for future email security research and development.
References
R. K. Karn, V. E. Jesi, S. M. Aslam, Spam Email Detection Using Machine Learning Integrated In Cloud, 2023 International Conference on Networking and Communications (ICNWC) (2023) 1–8.
S. Rao, A. K. Verma, T. Bhatia, A review on social spam detection: challenges, open issues, and future directions, Expert Systems with Applications 186 (2021) 115742–115742.
S. K. Reddy, T. Padmaja, Maruthi, Non Machine and Machine Learning Spam Filtering Techniques, International Journal of Recent Technology and Engineering (IJRTE) (7) (2019) 2277–3878.
E. G. Dada, J. S. Bassi, H. Chiroma, A. O. Adetunmbi, O. E. Ajibuwa, Machine learning for email spam filtering: review, approaches and open research problems, Heliyon (6) (2019) 5–5.
A. Chavez, TF-IDF classification based Multinomial Naïve Bayes model for spam filtering (Doctoral dissertation, Dublin, National College of Ireland, 2020.
A. Junnarkar, S. Adhikari, J. Fagania, P. Chimurkar, D. Karia, E-mail spam classification via machine learning and natural language processing, 2021 Third International Conference on Intelligent Communication Technologies and Virtual Mobile Networks (ICICV) (2021) 693–699.
S. O. Olatunji, Improved email spam detection model based on support vector machines, Neural Computing and Applications 31 (2019) 691–699.
Q. Ouyang, J. Tian, J. Wei, E-mail Spam Classification using KNN and Naive Bayes, Highlights in Science, Engineering and Technology 38 (2023) 57–63.
A. Mohinur, The Enron Email Dataset (2022).URL https://www.kaggle.com/datasets/mohinurabdurahimova/maildataset/data January 19, 2024
Refbacks
- There are currently no refbacks.