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Mining social network data for personalisation and privacy concerns: a case study of Facebook's Beacon

机译:挖掘社交网络数据以解决个性化和隐私问题:Facebook Beacon案例研究

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摘要

The popular success of online social networking sites (SNS) such as Facebook is a hugely tempting resource of data mining for businesses engaged in personalised marketing. The use of personal information, willingly shared between online friends' networks intuitively appears to be a natural extension of current advertising strategies such as word-of-mouth and viral marketing. However, the use of SNS data for personalised marketing has provoked outrage amongst SNS users and radically highlighted the issue of privacy concern. This paper inverts the traditional approach to personalisation by conceptualising the limits of data mining in social networks using privacy concern as the guide. A qualitative investigation of 95 blogs containing 568 comments was collected during the failed launch of Beacon, a third party marketing initiative by Facebook. Thematic analysis resulted in the development of taxonomy of privacy concerns which offers a concrete means for online businesses to better understand SNS business landscape - especially with regard to the limits of the use and acceptance of personalised marketing in social networks.
机译:Facebook等在线社交网站(SNS)广受欢迎的成功是从事个性化营销的企业的诱人数据挖掘资源。自愿在在线朋友网络之间共享的个人信息的使用似乎是当前广告策略(如口碑传播和病毒式营销)的自然延伸。但是,将SNS数据用于个性化营销已激起了SNS用户的愤怒,并从根本上突出了隐私问题。本文通过以隐私关注为指导,通过概念化社交网络中数据挖掘的局限性来颠覆传统的个性化方法。在Facebook第三方营销计划Beacon失败发布期间,对95个博客进行了定性调查,其中包含568条评论。主题分析导致隐私关注分类法的发展,这为在线企业提供了一种更好地理解SNS业务格局的具体方法,尤其是在社交网络中使用和接受个性化营销的限制方面。

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