Trustworthy and profit: A new value-based neighbor selection method in recommender systems under shilling attacks

作者:

Highlights:

• Recommender systems are vulnerable to shilling attacks.

• Prior shilling attack detection strategies often feature high false-positive rates.

• The value dimension associated with recommendations is often ignored in prior work.

• To address both issues, this study proposes a Value-based Neighbor Selection method.

• Experimental results demonstrate the effectiveness of the proposed method over benchmarks.

摘要

User-based collaborative filtering recommender systems are widely deployed by e-retailers to facilitate customer’ decision-making and enhance e-retailers' profitability. Despite the advantages these systems provide, their recommendation effectiveness is vulnerable to attacks from malicious users who inject biased ratings. Such attacks against recommender systems are called shilling attacks. Although several shilling attack detection mechanisms have been proposed in previous studies, their detection performance is limited in various attack conditions. Furthermore, few of these mechanisms consider the value-dimension associated with recommendations, which is crucial for e-retailers. This research proposes a novel approach called Value-based Neighbor Selection (VNS) to address the above limitations. The objective of this approach is to protect recommender systems from shilling attacks while improving e-retailers' profitability. It alleviates the aforementioned problems through strategically selecting neighbors whose preferences are then used to make recommendations. We have performed a series of empirical validations in various attack conditions to compare the performance of the proposed method and three benchmark methods, in terms of both recommendation accuracy and e-retailer profitability. The results show the advantages of the proposed method in balancing customer satisfaction and e-retailer profitability.

论文关键词:Recommender systems,Shilling attacks,Profitability,Collaborative filtering

论文评审过程:Received 1 March 2019, Revised 14 July 2019, Accepted 14 July 2019, Available online 19 July 2019, Version of Record 14 August 2019.

论文官网地址:https://doi.org/10.1016/j.dss.2019.113112