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Actively Building Private Recommender Networks for Evolving Reliable Relationships

机译:积极建立私人推荐网络以发展可靠的关系

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Recommender systems have been successfully using information from social networks to improve the quality of results for the targeted users. In this work, we propose a novel model that allows users to actively cultivate their recommender network. Building on existing recommender systems, we suggest providing users with transparent information on users who might be able to suggest relevant items to their taste. Ensuring that users may keep their desired privacy level, this framework allows users to make anonymous contacts. In this way, the recommender system not only learns user taste, but makes these learned preferences transparent and editable. As more and more relevant recommendations by anonymous contacts are made, the recommender network evolves and builds trust between reliable contacts that share common interests.
机译:推荐系统已成功使用社交网络中的信息来提高目标用户的搜索结果质量。在这项工作中,我们提出了一种新颖的模型,该模型允许用户积极培养其推荐网络。我们建议在现有推荐系统的基础上,为用户提供有关可能能够根据自己的口味建议相关项目的用户的透明信息。为了确保用户可以保持所需的隐私级别,此框架允许用户进行匿名联系人。以此方式,推荐器系统不仅学习用户的品味,而且使这些学习到的偏好透明且可编辑。随着越来越多的匿名联系人提出相关建议,推荐网络不断发展,并在拥有共同利益的可靠联系人之间建立了信任。

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