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An attention-based neural popularity prediction model for social media events

机译:基于注意的社交媒体事件神经流行度预测模型

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Online interaction behavior between web users often makes some events go viral. Popularity prediction of events is a key task in many security related applications. It forecasts how widely events would spread based on the information of evolution at an early stage. Existing methods either rely on careful feature engineering, or solely consider time series, ignoring rich information of user and text content. In this paper, we attempt to extract and fuse the rich information of text content, user and time series in a data-driven fashion. To this end, we design a popularity prediction model based on deep neural networks, which uses three encoders to extract high-level representation of text content, users and time series respectively. In addition, we incorporate attention mechanism to make our model focus on important features. Experiments on real world dataset show the effectiveness of our proposed model.
机译:Web用户之间的在线交互行为通常会使某些事件传播开来。在许多与安全相关的应用程序中,事件的流行度预测是一项关键任务。它根据早期的演化信息预测事件的传播范围。现有方法要么依靠仔细的功能工程,要么仅考虑时间序列,而忽略用户和文本内容的丰富信息。在本文中,我们尝试以数据驱动的方式提取和融合文本内容,用户和时间序列的丰富信息。为此,我们设计了基于深度神经网络的受欢迎程度预测模型,该模型使用三个编码器分别提取文本内容,用户和时间序列的高级表示形式。此外,我们并入了注意力机制,使我们的模型专注于重要功能。在现实世界数据集上的实验证明了我们提出的模型的有效性。

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