An Adaptive Collaborative Filtering Algorithm for Online Reputation Systems

Min Zuo, Jianhua Li, Gongshen Liu
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引用次数: 3

Abstract

This paper presents an adaptive collaborative filtering algorithm to help users of online reputation systems avoid the misleading of dishonest ratings. This algorithm evaluates the trustworthiness of ratings by comparing the raterspsila opinions with the opinions of the evaluator, and gives the ratings proper weights before including them into the final judgment. Different weighting functions are applied to positive and negative ratings adaptively so that the weights can better capture the characteristics of various types of malicious raters. Simulations prove that the proposed algorithm can effectively avoid misleading ratings, minimize their bad influences on trust evaluation, and help users make more reliable trust decisions from a personal point of view.
在线声誉系统的自适应协同过滤算法
本文提出了一种自适应协同过滤算法,以帮助在线信誉系统的用户避免不诚实评级的误导。该算法通过比较评级者的意见和评估者的意见来评估评级的可信度,并在将评级纳入最终判断之前给予适当的权重。对正面和负面评级自适应地应用不同的权重函数,使权重能更好地捕捉各种类型恶意评级者的特征。仿真结果表明,该算法可以有效地避免误导性评级,最大限度地减少其对信任评估的不良影响,帮助用户从个人角度做出更可靠的信任决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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