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On Predicting Twitter Trend: Factors and Models

机译:预测推特趋势:因素和模型

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摘要

In this paper, we predict hashtag trend in Twitter network with two basic issues under investigation, i.e. trend factors and prediction models. To address the first issue, we consider different content and context factors by designing features from tweet messages, network topology, user behavior, etc. To address the second issue, we adopt prediction models that have different combinations of the two basic model properties, i.e. linearity and state-space. Experiments on large Twitter dataset show that both content and context factors can help trend prediction. However, the most relevant factors are derived from user behaviors on the specific trend. Non-linear models are significantly better than their linear counterparts, which can be further slightly improved by the adoption of state-space models.
机译:在本文中,我们预测了Twitter网络中的HashTAG趋势,具有调查的两个基本问题,即趋势因素和预测模型。要解决第一个问题,我们通过设计来自Tweet消息,网络拓扑,用户行为等的功能来考虑不同的内容和上下文因素来解决第二个问题,我们采用具有两个基本模型属性的不同组合的预测模型,即线性和状态空间。大型Twitter数据集上的实验表明,内容和上下文因素都可以帮助趋势预测。但是,最相关的因素是从用户行为的特定趋势中的。非线性模型明显优于其线性对应物,通过采用状态空间模型可以进一步略微提高。

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