E-mail Fraud Detection
Main Article Content
Abstract
Spam issues have become worse on social media platforms and apps with the growth of IoT. To solve the problem, researchers have suggested several spam detection techniques. Spam rates are still high despite the use of anti-spam technologies and tactics, especially given the ubiquity of rogue e-mails that lead to dangerous websites. By using up memory or storage space, spam e-mails may cause servers to run slowly. One of the most essential methods for identifying and eliminating spam is filtering e-mails. To this end, various deep learning and machine learning technologies have been used, including Naive Bayes, decision trees, SVM, and random forest. E-mail and Internet of Things spam filters use various machine learning approaches and systems are categorized in this research. Additionally, as more people use mobile devices and SMS services become more affordable, the issue of spam SMS messages is spreading worldwide. This study suggests using a variety of machine learning approaches to detect and get rid of spam as a solution to this problem. According to the trial findings, the TF-IDF with Random Forest classification algorithm outperformed the other examined algorithms in accuracy %. It is only possible to gauge performance on accuracy since the dataset is imbalanced. Therefore, the algorithms must have good precision, recall, and F-measure.
Downloads
Article Details
This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.
How to Cite
References
Identification of Spam E-mail Using Information from E-mail Header, Shukor Bin Abd Razak and Ahmad Fahrulrazie Bin Mohamad, 13th International Conference on Intelligent Systems Design and Applications (ISDA), 2013.
The Two Mo's: Mohammed Reza Parsei and Mohammed Salehi Email Spam Detection Using Part of Speech Tagging, 2015 2nd International Conference on Knowledge-Based Engineering and Innovation (KBEI).
Tareek M. Pattewar and Sunil B. Rathod Using a Bayesian classifier to analyse email for spam content was the topic of a presentation at the 2015 IEEE International Conference on Computer Security and Privacy.
The authors are Aakash Atul Alurkar, Sourabh Bharat Ranade, Shreeya Vijay Joshi, Siddhesh Sanjay Ranade, Piyush A. Sonewa, Parikshit N. Mahalle, and Arvind V. Deshpande. "A Proposed Data Science Approach for E-mail Spam Classification using Machine Learning Techniques," 2017.
Together, Kriti Agarwal and Tarun Kumar In the 2018 proceedings of the International Conference on Intelligent Computing and Control Systems (ICICCS), the authors of "E-mail Spam Detection using an integrated approach of Nave Bayes and Particle Swarm Optimisation" described their method.
Hezha M. Tareq Abdulhadi, Cihan Varol, At the December 2018 International Congress on Big Data, Deep Learning, and Countering Cyber Terrorism, researchers compared several string-matching algorithms for use in detecting spam emails.
Xu, Dong, Ivor W. H. Tsang, and Lixin Duan. An method to domain adaptation based on domain-dependent regularisation using numerous independent domains. Neural Networks and Learning Systems, Volume 23 Issue 3 of the IEEE Transactions on (2012).
Ghulam Mujtaba et al. "E-mail classification research trends: Review and open issues." 2017's IEEE Access is out now. https://doi.org/10.1109/ACCESS.2017.2702187
Mr. Shrawan Kumar Trivedi. "Spam Detection Classifiers as a Case Study in Machine Learning" International Symposium on Computational and Business Intelligence (ISCBI), 2016 IEEE, 2016. To
you, Wanqing, and the others. Naive Bayes Classification for Spam Filtering Via Web Services. Conference on Big Data Computing Services and Applications (BigDataService) 2015, the First IEEE International Conference on. IEEE, 2015.
S. B. Rathod and T. M. Pattewar. "A Bayesian classifier for content-based spam detection in electronic mail." 2015 IEEE International Conference on.
Esra Sahn, Murat Aydos, and Fatih Orhan wrote an article titled "Spam/ham e-mail classification using machine learning methods based on bag of words technique." For 2018, the SIU will host the 26th Annual Conference on Signal Processing and Communications Applications. IEEE, 2018. https://doi.org/10.1109/SIU.2018.8404347
To cite this article: V. Bhalla, T. Singla, A. Gahlot, and V. Gupta, "Bluetooth based attendance management system," International Journal of Innovations in Engineering and Technology, vol. 3, no. 1, pp. 227-233, 2013.
Present and accounted for: Increasing student attendance via parental and community participation, by J. L. Epstein and S. B. Sheldon, The Journal of Educational Research, vol. 95, no. 5, pp. 308-318, 2002. https://doi.org/10.1080/00220670209596604
"Socioeconomic disadvantage, school attendance, and early cognitive development: The differential effects of school exposure," by D. D. Ready, published in Sociology of Education, vol. 83, no. 4, pages 271-286, 2010. https://doi.org/10.1177/0038040710383520
Ghulam Mujtaba et al. "E-mail classification research trends: Review and open issues." Five (2017) IEEE Access. https://doi.org/10.1109/ACCESS.2017.2702187
Web Information Retrieval Models, Techniques, and Issues: Survey by J. N. Singh, P. Johri, A. Kumar, and M. Singh. Presented at the 2nd International Conference on Advance Computing and Innovative Technologies in Engineering (ICACITE), Greater Noida, India, 2022.
C. P. McCluskey, T. S. Bynum, and J. W. Patchin, “Reducing chronic absenteeism: An assessment of an early truancy initiative,” NCCD news, vol. 50, no. 2, pp. 214–234, 2004. https://doi.org/10.1177/0011128703258942