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Published March 30, 2022 | Version CC BY-NC-ND 4.0
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Web Phishing Detection using Machine Learning

  • 1. Assistant Professor, Department of Computer Science and Engineering, Sri Chandrasekharendra Saraswathi Viswa Mahavidyalaya, Kanchipuram (Tamil Nadu), India.
  • 2. B.E Student, Department of Computer Science and Engineering, Sri Chandrasekharendra Saraswathi Viswa Mahavidyalaya, Kanchipuram (Tamil Nadu), India.

Contributors

Contact person:

  • 1. B.E Student, Department of Computer Science and Engineering, Sri Chandrasekharendra Saraswathi Viswa Mahavidyalaya, Kanchipuram (Tamil Nadu), India.

Description

Abstract: A web service is one of the most important Internet communications software services. Using fraudulent methods to get personal information is becoming increasingly widespread these days. However, it makes our lives easier, it leads to numerous security vulnerabilities to the Internet’s private structure. Web phishing is just one of the many security risks that web services face. Phishing assaults are usually detected by experienced users however, security is a primary concern for system users who are unaware of such situations. Phishing is the act of portraying malicious web runners as genuine web runners to obtain sensitive information from the end-user. Phishing is currently regarded as one of the most dangerous threats to web security. Vicious Web sites significantly encourage Internet criminal activity and inhibit the growth of Web services. As a result, there has been a tremendous push to build a comprehensive solution to prevent users from accessing such websites. We suggest a literacy-based strategy to categorize Web sites into three categories: benign, spam, and malicious. Our technology merely examines the Uniform Resource Locator (URL) itself, not the content of Web pages. As a result, it removes run-time stillness and the risk of drug users being exposed to cyber surfer-based vulnerabilities. When compared to a blacklisting service, our approach performs better on generality and content since it uses learning techniques.

Notes

Published By: Blue Eyes Intelligence Engineering and Sciences Publication (BEIESP) © Copyright: All rights reserved.

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Additional details

Related works

Is cited by
Journal article: 2278-3075 (ISSN)

References

  • Detecting Phishing Websites Using Machine Learning by Sagar Patil, Yogesh Shetye, Nilesh Shendage published in the year 2020.
  • Machine Learning-Based Phishing Attack Detection by Sohrab Hossain, Dhiman Sarma, Rana Joythi Chakma published in the year 2020.
  • Phishing website detection based on effective machine learning approach by Gururaj Harinahalli Lokesh published in the year 2020.
  • Research on Website Phishing Detection Based on LSTM RNN by Yang Su published in the year 2020.
  • Detecting Phishing Website Using Machine Learning by Mohammed Hazim Alkawaz, Stephanie Joanne Steven, Asif Iqbal Hajamydeen published in the year 2020.
  • Detection of Phishing Websites by Using Machine Learning-Based URL Analysis by Mehmet Korkmaz, Ozgur Koray Sahingoz, Banu Diri published in the year 2020.
  • Phishing Website Classification and Detection Using Machine Learning by Jitendra Kumar, A. Santhanavijayan, B. Janet, Balaji Rajendran, B.S. Bindhumadhava was published in the year 2020.

Subjects

ISSN: 2278-3075 (Online)
https://portal.issn.org/resource/ISSN/2278-3075#
Retrieval Number:100.1/ijitee.C98040311422
https://www.ijitee.org/portfolio-item/C98040311422/
Journal Website: www.ijitee.org
https://www.ijitee.org/
Publisher: Blue Eyes Intelligence Engineering and Sciences Publication (BEIESP)
https://www.blueeyesintelligence.org/