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Social Relations versus Near Neighbours: Reliable Recommenders in Limited Information Social Network Collaborative Filtering for Online Advertising

机译:社会关系与近邻:在有限信息社交网络中对在线广告进行协作过滤的可靠建议

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摘要

Online advertising benefits by recommender systems since the latter analyse reviews and rating of products, providing useful insight of the buyer perception of products and services. When traditional recommender system information is enriched with social network information, more successful recommendations are produced, since more users' aspects are taken into consideration. However, social network information may be unavailable since some users may not have social network accounts or may not consent to their use for recommendations, while rating data may be unavailable due to the cold start phenomenon. In this paper, we propose an algorithm that combines limited collaborative filtering information, comprised only of users' ratings on items, with limited social network information, comprised only of users' social relations, in order to improve (1) prediction accuracy and (2) prediction coverage in collaborative filtering recommender systems, at the same time. The proposed algorithm considerably improves rating prediction accuracy and coverage, while it can be easily integrated in recommender systems.
机译:推荐系统可以使在线广告受益,因为推荐系统可以分析产品的评论和评级,从而提供有用的洞察力,帮助买方了解产品和服务。当传统推荐系统信息中充斥着社交网络信息时,由于会考虑更多用户方面,因此会产生更多成功的推荐。但是,社交网络信息可能不可用,因为某些用户可能没有社交网络帐户或可能不同意他们的推荐使用,而由于冷启动现象,评分数据可能不可用。在本文中,我们提出了一种算法,该算法将仅由用户对项目的评分组成的有限协作过滤信息与仅由用户的社会关系组成的有限社交网络信息相结合,以提高(1)预测准确性和(2) )同时在协作过滤推荐系统中进行预测。所提出的算法可大大提高收视率预测的准确性和覆盖范围,同时可以轻松地将其集成到推荐系统中。

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