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Topic Based Information Diffusion Prediction Model with External Trends

机译:具有外部趋势的基于主题的信息扩散预测模型

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Information diffusion model plays an important role in many real-world applications such as online marketing and e-government campaigns. Existing approaches often predict information diffusion by examining whether events are triggered by external trends or the social network itself. However, existing methods cannot take into account the semantically rich 'topics' to estimate the correlations between users and messages describing some events. The main contribution of our work is the development of the Topic based Information Diffusion (TBID) model which can incorporate external trends model and topic based social descriptions to enhance the effectiveness of predicting information diffusion in online social networks. Experiments conducted based on real-world data sets confirm the distinct advantage of the proposed computational method. Our research opens the door to the development of a more effective personalized information recommendation model in online social media.
机译:信息传播模型在许多实际应用中(例如在线营销和电子政务活动)中扮演着重要角色。现有方法通常通过检查事件是由外部趋势触发还是由社交网络本身触发来预测信息扩散。但是,现有方法不能考虑语义丰富的“主题”来估计用户和描述某些事件的消息之间的相关性。我们工作的主要贡献是开发了基于主题的信息扩散(TBID)模型,该模型可以结合外部趋势模型和基于主题的社交描述,以增强预测在线社交网络中信息扩散的有效性。根据实际数据集进行的实验证实了所提出的计算方法的独特优势。我们的研究为在线社交媒体上开发更有效的个性化信息推荐模型打开了大门。

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