首页> 外文会议>2013 ASE/IEEE International Conference on Social Computing >Predictability of User Behavior in Social Media: Bottom-Up v. Top-Down Modeling
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Predictability of User Behavior in Social Media: Bottom-Up v. Top-Down Modeling

机译:社交媒体中用户行为的可预测性:自下而上诉自上而下建模

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Recent work has attempted to capture the behavior of users on social media by modeling them as computational units processing information. We propose to extend this perspective by explicitly examining the predictive power of such a view. We consider a network of fifteen thousand users on Twitter over a seven week period. To evaluate the predictability of the users, we apply two contrasting modeling paradigms: computational mechanics and echo state networks. Computational mechanics seeks to construct the simplest model with the maximal predictive capability, while echo state networks relax from very complicated dynamics until predictive capability is reached. We demonstrate that the behavior of users on Twitter can be well-modeled as processes with self-feedback and compare the performance of models built with both the statistical and neural paradigms.
机译:最近的工作试图通过将用户建模为处理信息的计算单元来捕获用户在社交媒体上的行为。我们建议通过明确检查这种观点的预测能力来扩展这种观点。我们考虑在七个星期内在Twitter上有1.5万个用户的网络。为了评估用户的可预测性,我们应用了两种截然不同的建模范例:计算力学和回声状态网络。计算力学力图构建具有最大预测能力的最简单模型,而回波状态网络则从非常复杂的动力学中放松下来,直至达到预测能力。我们证明,Twitter上的用户行为可以很好地建模为具有自我反馈的流程,并且可以比较使用统计和神经范式构建的模型的性能。

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