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Forecasting Retweet Count during Elections Using Graph Convolution Neural Networks

机译:图卷积神经网络预测选举期间的转发次数

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A retweet refers to sharing a tweet posted by another user on Twitter and is primary way information spreads on the Twitter network. Political parties use Twitter extensively as a part of their campaign to promote their presence, announce their propaganda, and at times debating with opponents. In this work we consider the problem of early prediction of the final retweet count using information from the network during the first several minutes after a post is made. Such predictions are useful for ranking and promoting posts and also can be used in combination with fake news detection. From a machine learning perspective, the task can be viewed as a regression problem. We introduce a novel graph convolution neural network for forecasting retweet count that combines network level features through graph convolution layers as well as tweet level features at a higher dense layer in the network. We first will provide an overview of the graph convolution network architecture and then perform several experiments on Twitter data collected during presidential elections in South Africa (2014) and Kenya (2013). We show that the model outperforms baseline models including a feed forward neural network and the popular point process based model SEISMIC.
机译:转推是指共享另一个用户在Twitter上发布的推文,这是信息在Twitter网络上传播的主要方式。政党广泛使用Twitter作为其竞选活动的一部分,以提高其知名度,宣布其宣传并有时与反对派进行辩论。在这项工作中,我们考虑在发布后的前几分钟内,使用网络中的信息对最终转发次数进行早期预测的问题。这样的预测对于排名和提升帖子很有用,也可以与假新闻检测结合使用。从机器学习的角度来看,可以将任务视为回归问题。我们引入了一种新颖的图卷积神经网络来预测转推数,该网络将通过图卷积层以及网络中较高密层的推特级特征相结合的网络级特征。我们首先将概述图卷积网络架构,然后对南非(2014年)和肯尼亚(2013年)总统选举期间收集的Twitter数据进行一些实验。我们显示该模型优于包括前馈神经网络和基于流行点过程的模型SEISMIC的基线模型。

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