Evaluating user reputation of online rating systems by rating statistical patterns

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摘要

Numerous complex systems such as rating systems are highly affected by a small number of spamming attackers. How to design a fast and effective ranking method under the threat of spamming attacks is significant in practice. In this paper, we extract the user’s rating characteristics from personal historical ratings to determine whether the user is normal. It is discovered that reliable users have little bias and their rating scores follow the pattern of peak distribution. On the opposite, malicious users usually have biased ratings and their rating scores scarcely follow a known pattern. A new reputation ranking method IOR (Iterative Optimization Ranking) is proposed based on user rating deviation and rating characteristics. The experimental results on three real datasets show that this method is more efficient than existing states of art methods. This new fundamental idea can be contributed to a new way to solve spammer attacking problem. It can also be applied in large and sparse bipartite rating networks in a short time.

论文关键词:Complex networks,Rating systems,Spamming attacks,Iterative refinement

论文评审过程:Received 4 December 2020, Revised 17 February 2021, Accepted 22 February 2021, Available online 25 February 2021, Version of Record 12 March 2021.

论文官网地址:https://doi.org/10.1016/j.knosys.2021.106895