scholarly journals Phishing Attacks Detection A Machine Learning-Based Approach

Author(s):  
Fatima Salahdine ◽  
Zakaria El Mrabet ◽  
Naima Kaabouch
2019 ◽  
Vol 8 (4) ◽  
pp. 1545-1555
Author(s):  
John Arthur Jupin ◽  
Tole Sutikno ◽  
Mohd Arfian Ismail ◽  
Mohd Saberi Mohamad ◽  
Shahreen Kasim ◽  
...  

The development of computer networks today has increased rapidly. This can be seen based on the trend of computer users around the world, whereby they need to connect their computer to the Internet. This shows that the use of Internet networks is very important, whether for work purposes or access to social media accounts. However, in widely using this computer network, the privacy of computer users is in danger, especially for computer users who do not install security systems in their computer. This problem will allow hackers to hack and commit network attacks. This is very dangerous, especially for Internet users because hackers can steal confidential information such as bank login account or social media login account. The attacks that can be made include phishing attacks. The goal of this study is to review the types of phishing attacks and current methods used in preventing them. Based on the literature, the machine learning method is widely used to prevent phishing attacks. There are several algorithms that can be used in the machine learning method to prevent these attacks. This study focused on an algorithm that was thoroughly made and the methods in implementing this algorithm are discussed in detail.


ITNOW ◽  
2020 ◽  
Vol 62 (4) ◽  
pp. 44-45
Author(s):  
Johanna Hamilton

Abstract Ilia Kolochenko, CEO and founder of ImmuniWeb, tells Johanna Hamilton AMBCS about the rise in phishing attacks and how the most sophisticated crimes go, largely, unnoticed.


Sensors ◽  
2020 ◽  
Vol 20 (16) ◽  
pp. 4540
Author(s):  
Kieran Rendall ◽  
Antonia Nisioti ◽  
Alexios Mylonas

Phishing is one of the most common threats that users face while browsing the web. In the current threat landscape, a targeted phishing attack (i.e., spear phishing) often constitutes the first action of a threat actor during an intrusion campaign. To tackle this threat, many data-driven approaches have been proposed, which mostly rely on the use of supervised machine learning under a single-layer approach. However, such approaches are resource-demanding and, thus, their deployment in production environments is infeasible. Moreover, most previous works utilise a feature set that can be easily tampered with by adversaries. In this paper, we investigate the use of a multi-layered detection framework in which a potential phishing domain is classified multiple times by models using different feature sets. In our work, an additional classification takes place only when the initial one scores below a predefined confidence level, which is set by the system owner. We demonstrate our approach by implementing a two-layered detection system, which uses supervised machine learning to identify phishing attacks. We evaluate our system with a dataset consisting of active phishing attacks and find that its performance is comparable to the state of the art.


Phishing is a common attack on credulous people by making them to disclose their unique information using counterfeit websites. The objective of phishing website URLs is to purloin the personal information like user name, passwords and online banking transactions. Phishers use the websites which are visually and semantically similar to those real websites. As technology continues to grow, phishing techniques started to progress rapidly and this needs to be prevented by using anti-phishing mechanisms to detect phishing. Machine learning is a powerful tool used to strive against phishing attacks. This paper surveys the features used for detection and detection techniques using machine learning


Author(s):  
Mohammad Nazmul Alam ◽  
Dhiman Sarma ◽  
Farzana Firoz Lima ◽  
Ishita Saha ◽  
Rubaiath-E- Ulfath ◽  
...  

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