A comparative study of shilling attack detectors for recommender systems

Author(s):  
Youquan Wang ◽  
Lu Zhang ◽  
Haicheng Tao ◽  
Zhiang Wu ◽  
Jie Cao
2016 ◽  
Vol E99.D (10) ◽  
pp. 2600-2611 ◽  
Author(s):  
Wentao LI ◽  
Min GAO ◽  
Hua LI ◽  
Jun ZENG ◽  
Qingyu XIONG ◽  
...  

Author(s):  
Yash Mehta ◽  
Aditya Singhania ◽  
Ayush Tyagi ◽  
Pranav Shrivastava ◽  
Mahesh Mali

Author(s):  
Li Yang ◽  
Xinxin Niu

AbstractShilling attacks have been a significant vulnerability of collaborative filtering (CF) recommender systems, and trust in CF recommender algorithms has been proven to be helpful for improving the accuracy of system recommendations. As a few studies have been devoted to trust in this area, we explore the benefits of using trust to resist shilling attacks. Rather than simply using user-generated trust values, we propose the genre trust degree, which differ in terms of the genres of items and take both trust value and user credibility into consideration. This paper introduces different types of shilling attack methods in an attempt to study the impact of users’ trust values and behavior features on defending against shilling attacks. Meanwhile, it improves the approach used to calculate user similarities to form a recommendation model based on genre trust degrees. The performance of the genre trust-based recommender system is evaluated on the Ciao dataset. Experimental results demonstrated the superior and comparable genre trust degrees recommended for defending against different types of shilling attacks.


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