Yuxiang Guan's research while affiliated with Shanghai Jiao Tong University and other places

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Publications (1)


The relationship between the number of layers and True TPR.
The relationship between number of iterations and TPR.
The relationship between number of hidden units and TPR.
Web Phishing Detection Using a Deep Learning Framework
  • Article
  • Full-text available

September 2018

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1,356 Reads

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129 Citations

Wireless Communications and Mobile Computing

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Yuxiang Guan

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Futai Zou

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[...]

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Web service is one of the key communications software services for the Internet. Web phishing is one of many security threats to web services on the Internet. Web phishing aims to steal private information, such as usernames, passwords, and credit card details, by way of impersonating a legitimate entity. It will lead to information disclosure and property damage. This paper mainly focuses on applying a deep learning framework to detect phishing websites. This paper first designs two types of features for web phishing: original features and interaction features. A detection model based on Deep Belief Networks (DBN) is then presented. The test using real IP flows from ISP (Internet Service Provider) shows that the detecting model based on DBN can achieve an approximately 90% true positive rate and 0.6% false positive rate.

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Citations (1)


... Their model achieved an impressive accuracy rate of 99.35% by transforming URLs into matrices, extracting features through CNN, and employing RF classifiers. In [10] study by Ping and colleagues, the primary focus was on leveraging deep learning to identify phishing websites. They introduced two categories of features, known as original and interaction features, and implemented a detection model based on the Deep Belief Network (DBN). ...

Reference:

Enhancing Cybercrime Deterrence with Artificial Intelligence
Web Phishing Detection Using a Deep Learning Framework

Wireless Communications and Mobile Computing