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Maximizing Social Network Influences Based on User Preferences

机译:根据用户偏好最大化社交网络影响力

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The rapid development of the Internet has made social network an important information dissemination platform. Although comprehensive research has been conducted on maximizing social network in the past few decades, users are usually modelled invariably as vertices in the graph, due to the lack of personal user data. However, the simple premises and assumptions ignore the differences between users. In this paper, we propose a diffusion model CMMI based on user preferences and diffusion enhancement. To access accurately user preferences, we propose to integrate user and product interactive information into social network. Then, we raise the issue of maximizing social network influence under diffusion model based on user preferences. Finally, we optimize the influence maximization algorithm. We conduct several experiments to prove the effectiveness of the algorithm on them. The experimental results show the superiority of our proposed algorithms.
机译:互联网的迅速发展使社交网络成为重要的信息传播平台。尽管在过去的几十年中已经对最大化社交网络进行了全面的研究,但是由于缺乏个人用户数据,通常将用户始终建模为图中的顶点。但是,简单的前提和假设会忽略用户之间的差异。在本文中,我们提出了一种基于用户偏好和扩散增强的扩散模型CMMI。为了准确访问用户的偏好,我们建议将用户和产品的交互式信息集成到社交网络中。然后,在基于用户偏好的扩散模型下,提出了最大化社交网络影响力的问题。最后,我们优化了影响最大化算法。我们进行了几次实验,以证明该算法对它们的有效性。实验结果表明了我们提出的算法的优越性。

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