CNN Based Malicious Website Detection by Invalidating Multiple Web Spams | IEEE Journals & Magazine | IEEE Xplore

CNN Based Malicious Website Detection by Invalidating Multiple Web Spams


This new malicious website detection method adopts the perspective of users and takes screenshots of webpages to invalidate Web spams. It uses a Convolutional Neural Netw...

Abstract:

Although a variety of techniques to detect malicious websites have been proposed, it becomes more and more difficult for those methods to provide a satisfying result nowa...Show More
Topic: Data Mining for Internet of Things

Abstract:

Although a variety of techniques to detect malicious websites have been proposed, it becomes more and more difficult for those methods to provide a satisfying result nowadays. Many malicious websites can still escape detection with various Web spam techniques. In this paper, we first summarize three types of Web spam techniques used by malicious websites, such as redirection spam, hidden IFrame spam, and content hiding spam. We then present a new detection method that adopts the perspective of users and takes screenshots of malicious webpages to invalidate Web spams. The proposed detection method uses a Convolutional Neural Network, which is a class of deep neural networks, as a classification algorithm. In order to verify the effectiveness of the method, two different experiments have been conducted. First, the proposed method was tested based on a constructed complex dataset. We present comparison results between the proposed method and representative machine learning-based detection algorithms. Second, the proposed method was tested to detect malicious websites in a real-world Web environment for three months. These experimental results illustrate that the proposed method has a better performance and is applicable to a practical Web environment.
Topic: Data Mining for Internet of Things
This new malicious website detection method adopts the perspective of users and takes screenshots of webpages to invalidate Web spams. It uses a Convolutional Neural Netw...
Published in: IEEE Access ( Volume: 8)
Page(s): 97258 - 97266
Date of Publication: 18 May 2020
Electronic ISSN: 2169-3536

Funding Agency:


References

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