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BlurMe: Inferring and Obfuscating User Gender Based on Ratings

机译:模糊:基于评级推断和扰乱用户性别

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User demographics, such as age. gender and ethnicity, are routinely used for targeting content and advertising products to users. Similarly, recommender systems utilize user demographics for personalizing recommendations and overcoming the cold-start problem. Often, privacy-concerned users do not provide these details in their online profiles. In this work, we show that a recommender system can infer the gender of a user with high accuracy, based solely on the ratings provided by users (without: additional metadata), and a relatively small number of users who share their demographics. We design techniques for effectively adding ratings to a user's profile for obfuscating the user's gender, while having an insignificant effect on the recommendations provided to that user.
机译:用户人口统计学,如年龄。性别和种族,通常用于将内容和广告产品定位给用户。同样,推荐系统利用用户人口统计数据进行个性化建议并克服冷启动问题。通常,隐私的用户不在其在线配置文件中提供这些细节。在这项工作中,我们表明推荐系统可以以高精度推断用户的性别,仅基于用户提供的评级(没有:额外的元数据),以及分享其人口统计数据的相对较少数量的用户。我们设计用于有效地将额定值添加到用户的配置文件中,以便对用户的性别进行混淆,同时对向该用户提供的建议具有微不足道的影响。

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