E-mail Fraud Detection

Main Article Content

Arju Kumar
Saurav Kumar
Kishan Kumar
Dr. Bharat Bhushan Naib

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.  

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How to Cite
E-mail Fraud Detection (Arju Kumar, Saurav Kumar, Kishan Kumar, & Dr. Bharat Bhushan Naib , Trans.). (2023). International Journal of Emerging Science and Engineering (IJESE), 11(9), 1-7. https://doi.org/10.35940/ijese.B7797.0811923
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Author Biographies

Arju Kumar, Department of Computer Science and Engineering, SCSE, Galgotias University, Greater Noida (U.P), India.

Arju Kumar, I belong from Supaul district in bihar. I am a student of B.Tech Computer Science and Engineering in Galgotias University. Currently I am living in Greater Noida Uttar Pradesh, Pin:201310. I have completed my 10th & 12th from BSEB. Currently I'm pursuing BTech in CSE branch from Galgotias University. I have skills in Java, Python and Flutter at basic level but I have done a lot of projects related to Web and Android development. My achievement is that I have participated in programs and contests like: Smart India Hackathon Nasa space research challenge, Coding Ninja contest, GFG weekly contest and many more like this. My hobbies are sketching, watching movies and video editing.

Saurav Kumar, Department of Computer Science and Engineering, SCSE, Galgotias University, Greater Noida (U.P), India.

Saurav Kumar, I am from Nalanda district in Bihar. I am a student of B.Tech Computer Science and Engineering in Galgotias University. Currently I am living in Greater Noida Uttar Pradesh, Pin:201310. I have completed my 10th & 12th from CBSE. Currently I'm doing BTech in CSE branch from Galgotias University. I have learnt c , c + +, python and java at basic level but i have done a lot of projects in Android development. My achievement is that I have participated in programs and contests like: Smart India Hackathon, Nasa space research challenge Coding Ninja contest, GFG weekly contest and many more like this. My hobbies are photography and video editing.

Kishan Kumar, Department of Computer Science and Engineering, SCSE, Galgotias University, Greater Noida (U.P), India.

Kishan Kumar, I belong from Supaul district in Bihar. I am a student of B.Tech Computer Science and Engineering in Galgotias University. Currently I am living in Greater Noida Uttar Pradesh, Pin:201310. I have completed my 10th & 12th from BSEB. Currently I'm pursuing BTech in CSE branch from Galgotias University. I have skills in Java, Python and Flutter at basic level but I have done a lot of projects related to Web and Android development. My achievement is that I have participated in programs and contests like: Smart India Hackathon, Nasa space research challenge, Coding Ninja contest, GFG weekly contest and many more like this. My hobbies are sketching, watching movies and video editing.

Dr. Bharat Bhushan Naib, Department of Computer Science and Engineering, SCSE, Galgotias University, Greater Noida (U.P), India.

Bharat Bhushan Naib, I am from New Delhi, Delhi, India. I am an Associate Professor at Galgotias University of B.Tech Computer Science and Engineering in Galgotias University. Currently I am living in Greater Noida Uttar Pradesh, India. I have worked with different positions in many organizations like: Society for Promotion of Industrial Development and Engineering Research, Samarth Smart Sustainable Solutions and Services, K.R. Mangalam University and currently I am working as an Associate Professor at Galgotias University. My achievement is that through the year I have experienced my quality skills and been able to achieve my goal . I have also lead the many students team as a project guide.

How to Cite

E-mail Fraud Detection (Arju Kumar, Saurav Kumar, Kishan Kumar, & Dr. Bharat Bhushan Naib , Trans.). (2023). International Journal of Emerging Science and Engineering (IJESE), 11(9), 1-7. https://doi.org/10.35940/ijese.B7797.0811923
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