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Social recommendation model based on user interaction in complex social networks

机译:复杂社交网络中基于用户交互的社交推荐模型

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摘要

The user interaction in online social networks can not only reveal the social relationships among users in e-commerce systems, but also imply the social preferences of a target user for recommendation services. However, the current research has rarely explored the impact of social interaction on recommendation performance, especially now that recommender systems face increasing challenges and suffer from poor efficiency due to social data overload. Therefore, applied research on user interaction has become increasingly necessary in the field of social recommendation. In this paper, we develop a novel social recommendation method based on the user interaction in complex social networks, called the SRUI model, to present a basis for improving the efficiency of the recommender systems. Specifically, a weighted social interaction network is first mapped to represent the interactions among social users according to the gathered information about historical user behavior. Thereafter, the complete path set is mined by the complete path mining (CPM) algorithm to find social similar neighbors with tastes similar to those of the target user. Finally, the social similar tendencies of the users on the complete paths are obtained to predict the final ratings of items through the SRUI model. A series of experimental results based on two real public datasets show that our approach performs better than other state-of-the-art methods in terms of recommendation performance.
机译:在线社交网络中的用户交互不仅可以揭示电子商务系统中用户之间的社交关系,还可以暗示目标用户对推荐服务的社交偏好。但是,当前的研究很少探讨社交互动对推荐绩效的影响,尤其是在推荐系统面临越来越多的挑战并且由于社交数据过载而导致效率低下的情况下。因此,在社交推荐领域中,关于用户交互的应用研究变得越来越必要。在本文中,我们开发了一种基于复杂社交网络中用户交互的新颖社交推荐方法,称为SRUI模型,从而为提高推荐系统的效率提供了基础。具体地,首先根据所收集的关于历史用户行为的信息,映射加权社交交互网络以表示社交用户之间的交互。此后,通过完整路径挖掘(CPM)算法来挖掘完整路径集,以找到口味类似于目标用户的社交相似邻居。最后,通过SRUI模型获得了用户在完整路径上的社交相似倾向,以预测商品的最终评分。基于两个真实公共数据集的一系列实验结果表明,在推荐效果方面,我们的方法比其他最新方法的效果更好。

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