整合网上社交网络,提升电子商务信誉体系

Xing Fang, J. Zhan, Nicholas Koceja, Kenneth Williams, J. Brewton
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引用次数: 5

摘要

网上购物已经被引入互联网用户几十年了。然而,许多人仍然容易受到网上购物风险的影响。大多数在线购物网站都采用了多种降低风险的解决方案。一个这样的解决方案,声誉系统,能够提供一个最新的声誉分数,每个在线卖家。然而,它也容易受到虚假评论的影响,这反过来又会误导潜在买家。为了扑灭这种火,之前的研究工作在某些评论上添加了友谊注释,这样潜在买家就可以根据他们与评论者的密切关系选择信任这些特定的评论。在本文中,我们通过将在线社交网络集成到在线购物网站来扩展这个朋友注释方案。我们的协议旨在提供三种具有不同隐私保护要求的在线评论提交方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrating online social networks for enhancing reputation systems of e-commerce
Online shopping has been introduced to Internet users for decades. However, many people are still susceptible to the risks of online shopping. Multiple risk-mitigating solutions have been adopted by most online shopping sites. One such solution, the reputation system, is capable of providing an up-to-date reputation score for every online seller. Nevertheless, it is also vulnerable to fake reviews, which can, in turn, mislead prospective buyers. In order to quench the fire, previous research work mounted friendship annotations to certain reviews, so that the prospective buyers can choose to trust such particular reviews based on their close relationships with the reviewers. In this paper, we extend this friend-annotation scheme by integrating online social networks to online shopping sites. Our protocol is designed to provide three online review submission methods with different privacy-preserving requirements.
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