为旅游相关服务建立健全的信誉体系

Huiying Duan, Peng Yang
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引用次数: 4

摘要

对于旅游相关服务(如酒店、餐厅等)来说,建立声誉系统是一个非常重要的问题。本文提出了一种先进的聚类方法——怀疑度计(SDM),根据嫌疑人的操纵行为对其进行排序。检测过程在不同的层,审查层,旅行者层和酒店层。对于提升和降级两种操纵行为,SDM为不同层的每个对象分配两个实数,即提升怀疑指数和降级怀疑指数。考虑各层之间的内在逻辑蕴涵,调整怀疑指数的原始值。识别不同层的嫌疑犯组。在此基础上,提出了一些实用的声誉模型来增强声誉系统的鲁棒性。在评价阶段,比较了嫌疑人亚群和无辜亚群的统计特征。本文给出了一些有趣的结论和现象。同时,通过提出的声誉模型比较方法——排名变异分析,比较了所有声誉模型在对抗操纵方面的效率。其中一个最重要的结论是,尽管不存在最适合每种情况的通用声誉模型,但给定SDM识别的一组嫌疑人,可以实现局部优化。
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Building robust Reputation Systems for travel-related services
There is a serious robust issue of building Reputation Systems for travel-related services, such as hotel, restaurant, etc. This paper proposes an advanced clustering approach, Suspicion Degree Meter (SDM), to rank suspects with respect to manipulative behavior. The detection process proceeds on different layers, review layer, traveller layer and hotel layer. Regarding two types of manipulative behavior, i.e. promoting and demoting manipulation, SDM assigns two real numbers, Suspicion Index for Promoting and Suspicion Index for Demoting, to each object in different layers. Inherent logical implication among different layers is considered to adjust the original value of Suspicion Index. Sets of suspects in different layers are identified. Furthermore, some practical reputation models are proposed to enhance the robustness of Reputation Systems. In the evaluation phase, statistical character of suspects and innocent subpopulation are compared. Some interesting conclusions and phenomena are shown. Meanwhile, by using a proposed reputation-model-comparison approach, Ranking Variation Analysis, all the reputation models are compared in terms of efficiency against manipulation. One of the most significant conclusions is that, although there is not a universal reputation model which fits best for every circumstance, given a set of suspects identified by SDM, local optimization can be achieved.
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