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A social recommendation method based on the integration of social relationship and product popularity

机译:一种基于社会关系与产品人气集成的社会推荐方法

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摘要

Web 2.0 technology fosters the flourishing growth and development of social networks. More and more people are participating in the activities on social networks to interact and share information with each other. Thus, consumers are often making their purchasing decisions based on information from the Internet such as reviews, ratings, and comments on products, especially from their trusted friends. However, a great amount of available information may cause the problem of information overload for consumers. In seeking to attain a good recommendation performance by taking the high-potential factors into account as far as possible, this paper proposes a novel social recommendation method on the basis of the integration of interactions, trust relationships and product popularity to predict user preferences, and recommend relevant products in social networks. In addition, the proposed method mainly focuses on analyzing user interactions to infer their latent interactions in accordance with the user ratings and corresponding reviews. Additionally, users may be affected by the popularity of products, so this factor has also been taken into consideration in this work. The experimental results show that the proposed recommendation method has a better recommendation performance in comparisons to other methods because the proposed method can accurately analyze user preferences and further recommend high-potential products to target users in social networks to support their purchase decision making. Furthermore, the proposed method can not only reduce the time and effort users spend on querying information, but also positively relieve the problem of information overload.
机译:Web 2.0技术促进了社交网络的蓬勃发展和发展。越来越多的人正在参与社交网络的活动,以互相互动和分享信息。因此,消费者通常根据来自互联网的信息,如互联网的信息,例如对产品的评价,评级和评论,尤其是来自他们可信赖的朋友的评价。但是,大量可用信息可能导致消费者的信息过载问题。在尽可能考虑到高潜力因素的情况下,在寻求良好的建议表现时,本文提出了一种新的社会推荐方法,基于互动,信任关系和产品人气的整合来预测用户偏好,以及建议在社交网络中的相关产品。此外,该方法主要侧重于分析用户交互,按照用户评级和相应的评论推断它们的潜在交互。此外,用户可能会受到产品普及的影响,因此在这项工作中也已经考虑了这一因素。实验结果表明,拟议的推荐方法具有更好的推荐性能与其他方法的比较,因为所提出的方法可以准确地分析用户偏好,并进一步推荐高潜在产品,以支持社交网络中的用户,以支持他们的购买决策。此外,所提出的方法不仅可以减少用户在查询信息上花费的时间和精力,而且积极地减轻信息过载问题。

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