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Recommendation of items using a social-based collaborative filtering approach and classification techniques

机译:使用基于社会的协作过滤方法和分类技术的推荐

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With the large amount of data generated every day in social networks, the use of classification techniques becomes a necessity. The clustering-based approaches reduce the search space by clustering similar users or items together. We focus in this paper on the personalised item recommendation in social context. Our approach combines in different ways the social filtering algorithm and the traditional user-based collaborative filtering algorithm. The social information is formalised by some social-behaviour metrics such as friendship, commitment and trust degrees of users. Moreover, two classification techniques are used: an unsupervised technique applied initially to all users and a supervised technique applied to newly added users. Finally, the proposed approach has been experimented using different existing datasets. The obtained results show the contribution of integrating social information on the collaborative filtering and the added value of using the classification techniques on the different algorithms in terms of the recommendation accuracy.
机译:通过每天在社交网络中产生的大量数据,使用分类技术成为必需品。基于聚类的方法通过将类似的用户或项目组聚集在一起来减少搜索空间。我们专注于本文在社会背景下的个性化项目建议。我们的方法以不同的方式组合了社会滤波算法和传统的基于用户的协作滤波算法。社会信息由一些社会行为指标正式化,例如友谊,承诺和信任学位。此外,使用了两个分类技术:最初应用于所有用户的无监督技术和应用于新添加的用户的监督技术。最后,使用不同现有数据集进行了所提出的方法。所获得的结果表明,在建议准确性方面,将社交信息集成了与不同算法上的分类技术的协作滤波和附加值的贡献。

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