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Privacy-Preserving and Secure Recommender System Enhance with K-NN and Social Tagging

机译:保留保留和安全的推荐系统使用k-nn和social标记增强

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With the introduction of Web 2.0, there has been an extreme increase in the popularity of social bookmarking systems and folksonomies. In this paper, our motive is to develop a recommender system that is based on user assigned tags and content present on web pages. Although the tag recommendations in social tagging systems can be very accurate and personalized, there exists an issue of risk to the privacy of user's profile, since the social tags are given by a user expose his preferences to other users in contact. To overcome this problem, we have incorporated obfuscation privacy strategies with the well-known Delicious dataset in social tagging based recommender system. We have applied the popular supervised machine-learning algorithm, K-Nearest Neighbours classifier to the dataset that recommends relevant tags to the user. Privacy has been introduced in our tag-based recommender system by hiding some of the necessary tags, bookmarks of a user and replacing them with some random tags and bookmarks. Our experiment results indicate that the recommender system being implemented is highly efficient in terms recall and privacy measure for different values of k. The results and comparisons indicate that we have successfully employed an effective tag recommender system, which also protects the user's privacy without any significant fall in the quality of recommendation.
机译:随着Web 2.0的引入,社会书签系统和人物论的普及都会极大地增加。在本文中,我们的动机是开发一个基于用户分配标签和网页上的内容的推荐人。虽然Social标记系统中的标签建议可以非常准确和个性化,但是用户个人资料的隐私存在风险问题,因为用户由用户提供给其他用户的偏好。为了克服这个问题,我们已将混淆隐私战略纳入了基于社交标记的推荐系统中的众所周知的美味数据集。我们已将受欢迎的监督机器学习算法,K-Collect邻居分类器应用于向用户推荐相关标签的数据集。通过隐藏一些必要的标签,用户的书签以及用一些随机标记和书签替换它们的基于标准的推荐系统,并在基于标签的推荐系统中引入了隐私。我们的实验结果表明,正在实施的推荐系统是高效的,对k的不同值召回和隐私措施非常有效。结果和比较表明,我们已成功使用有效的标签推荐系统,该系统还保护用户的隐私,而不会在建议质量的情况下重大下降。

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