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Community Gravity: Measuring Bidirectional Effects by Trust and Rating on Online Social Networks

机译:社区重力:通过信任和评分对在线社交网络的双向影响

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Several attempts have been made to analyze customer behavior on online E-commerce sites. Some studies particularly emphasize the social networks of customers. Users' reviews and ratings of a product exert effects on other consumers' purchasing behavior. Whether a user refers to other users' ratings depends on the trust accorded by a user to the reviewer. On the other hand, the trust that is felt by a user for another user correlates with the similarity of two users' ratings. This bidirectional interaction that involves trust and rating is an important aspect of understanding consumer behavior in online communities because it suggests clustering of similar users and the evolution of strong communities. This paper presents a theoretical model along with analyses of an actual online E-commerce site. We analyzed a large community site in Japan: @cosme. The noteworthy characteristics of @cosme are that users can bookmark their trusted users; in addition, they can post their own ratings of products, which facilitates our analyses of the ratings' bidirectional effects on trust and ratings. We describe an overview of the data in @cosme, analyses of effects from trust to rating and vice versa, and our proposition of a measure of of community gravity, which measures how strongly a user might be attracted to a community. Our study is based on the @cosme dataset in addition to the Epinions dataset. It elucidates important insights and proposes a potentially important measure for mining online social networks.
机译:已经进行了几次尝试,以分析在线电子商务网站上的客户行为。一些研究特别强调客户的社交网络。用户对其他消费者采购行为的产品评价和评级效应。用户是否指的是其他用户的额定调取决于用户对审阅者赋予的信任。另一方面,用户对另一个用户感到的信任与两个用户评级的相似性相关联。这种双向互动涉及信任和评级是了解在线社区中的消费者行为的重要方面,因为它建议对类似用户的聚类和强大社区的演变。本文提出了理论模型以及实际的在线电子商务网站的分析。我们在日本分析了一个大型社区网站:@cosme。 @cosme的值得注意的特征是用户可以为他们的信任用户添加书签;此外,他们可以发布自己的产品评级,这有助于我们对信任和评级的评级分析。我们描述了@Cosme中数据的概述,从信任到评级的影响以及反之亦然的影响,以及我们对社区重力的衡量标准的命题,这衡量了用户可能被社区吸引的强烈。除了介绍数据集之外,我们的研究基于@COSME数据集。它阐明了重要的见解,并提出了挖掘在线社交网络的可能重要措施。

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