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Dynamical Modeling, Analysis, and Control of Information Diffusion over Social Networks: A Deep Learning-Based Recommendation Algorithm in Social Network

机译:社交网络信息扩散的动态建模,分析和控制:社交网络中基于深度学习的推荐算法

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摘要

The recommendation algorithm can break the restriction of the topological structure of social networks, enhance the communication power of information (positive or negative) on social networks, and guide the information transmission way of the news in social networks to a certain extent. In order to solve the problem of data sparsity in news recommendation for social networks, this paper proposes a deep learning-based recommendation algorithm in social network (DLRASN). First, the algorithm is used to process behavioral data in a serializable way when users in the same social network browse information. Then, global variables are introduced to optimize the encoding way of the central sequence of Skip-gram, in which way online users’ browsing behavior habits can be learned. Finally, the information that the target users’ have interests in can be calculated by the similarity formula and the information is recommended in social networks. Experimental results show that the proposed algorithm can improve the recommendation accuracy.
机译:推荐算法可以打破社交网络拓扑结构的限制,增强社交网络上信息(正面或负面)的通信能力,并在一定程度上引导社交网络中新闻的信息传输方式。为了解决社交网络新闻建议中数据稀疏问题的问题,提出了一种社交网络(DLRASN)的深度学习推荐算法。首先,当用户在同一社交网络中的信息浏览信息时,算法用于以序列化方式处理行为数据。然后,引入全局变量以优化Skip-Gram的中央序列的编码方式,以在线用户的浏览行为习惯可以学习。最后,可以通过相似公式计算目标用户对其兴趣的信息,并且在社交网络中建议使用信息。实验结果表明,该算法可以提高推荐准确性。

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