Nowadays web surfing is an integral part of the life of the average person and everyone would like to protect his own data from thieves and malicious web pages. Therefore, this paper proposes a solution to the discrimination of malicious and benign websites problem with desirable accuracy. We propose to utilize machine learning methods for classification malicious and benign websites based on URL and other host-based features. State-of-the-art gradient-boosted decision trees are proposed to use for this task and they have been compared with well-known machine learning methods as random forest and multilayer perceptron. It was shown that all machine learning methods provided desirable accuracy which is higher than 95% for solving this proble...
The large branches of Machine Learning represent an immense support for the detection of ma...
Web applications have become ubiquitous for many business sectors due to their platform independence...
Abstract — Deceitful and malicious web sites pretense significant danger to desktop security, integr...
The opportunity for potential attackers to use more advanced techniques to exploit more people who a...
Security is a major concern on the Internet today. Phishing and malware attacks are amongst those th...
Recently, with the increase in Internet usage, cybersecurity has been a significant challenge for co...
In detecting malicious websites, a common approach is the use of blacklists which are not exhaustive...
Amid the rapid proliferation of thousands of new websites daily, distinguishing safe ones from poten...
Over the last few years, the Web has seen a massive growth in the number and kinds of web services. ...
Tremendous resources are spent by organizations guarding against and recovering from cybersecurity a...
This chapter compares three different machine learning techniques, i.e. Gaussian process classificat...
The openness of the World Wide Web (Web) has become more exposed to cyber-attacks. An attacker perfo...
In today's Internet, online content and especially webpages have increased exponentially. Alongside ...
Malicious web domains represent a big threat to web users' privacy and security. With so much freely...
The simplest approach to get sensitive information from unwitting people is through a phishing attac...
The large branches of Machine Learning represent an immense support for the detection of ma...
Web applications have become ubiquitous for many business sectors due to their platform independence...
Abstract — Deceitful and malicious web sites pretense significant danger to desktop security, integr...
The opportunity for potential attackers to use more advanced techniques to exploit more people who a...
Security is a major concern on the Internet today. Phishing and malware attacks are amongst those th...
Recently, with the increase in Internet usage, cybersecurity has been a significant challenge for co...
In detecting malicious websites, a common approach is the use of blacklists which are not exhaustive...
Amid the rapid proliferation of thousands of new websites daily, distinguishing safe ones from poten...
Over the last few years, the Web has seen a massive growth in the number and kinds of web services. ...
Tremendous resources are spent by organizations guarding against and recovering from cybersecurity a...
This chapter compares three different machine learning techniques, i.e. Gaussian process classificat...
The openness of the World Wide Web (Web) has become more exposed to cyber-attacks. An attacker perfo...
In today's Internet, online content and especially webpages have increased exponentially. Alongside ...
Malicious web domains represent a big threat to web users' privacy and security. With so much freely...
The simplest approach to get sensitive information from unwitting people is through a phishing attac...
The large branches of Machine Learning represent an immense support for the detection of ma...
Web applications have become ubiquitous for many business sectors due to their platform independence...
Abstract — Deceitful and malicious web sites pretense significant danger to desktop security, integr...