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Network embedding enhanced intelligent recommendation for online social networks

机译:网络嵌入在线社交网络的增强型智能建议

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摘要

With the fast development of Internet technology, more and more online social networks are changing our daily life. Whether or not an accurate recommendation can be provided for each user in the massive amount of information directly affects the user's enthusiasm for receiving network services and the user experience effect, which in turn determines the user's participation and loyalty to network applications. However, most previous methods only use a single network topology information and ignore other auxiliary information (such as user content information). Moreover, how to deal with large scale network is a challenging task. To tackle these challenges, we propose a topic-aware network embedding approach for providing intelligent recommendation services. Specifically, we first extract the network topology based on the constructed social network. Then, we extract the topic information based on the context released by the users with the help of topic model. Finally, a topic-aware network embedding framework is utilized for recommendation. Experimental results on two-widely used dataset demonstrate that our method can achieve the best performance.
机译:随着互联网技术的快速发展,越来越多的在线社交网络正在改变我们的日常生活。在大量信息中可以为每个用户提供准确的建议,直接影响用户对接收网络服务的热情和用户体验效果,这反过来决定了对网络应用程序的参与和忠诚度。然而,最先前的方法仅使用单个网络拓扑信息并忽略其他辅助信息(例如用户内容信息)。此外,如何处理大规模网络是一个具有挑战性的任务。为了解决这些挑战,我们提出了一个主题感知网络嵌入方法,用于提供智能推荐服务。具体而言,我们首先基于构造的社交网络提取网络拓扑。然后,我们基于用户在主题模型的帮助下基于用户释放的上下文提取主题信息。最后,利用主题感知网络嵌入框架来推荐。两种广泛使用的数据集上的实验结果表明,我们的方法可以实现最佳性能。

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