健康情绪与社交媒体竞争互动的动态

Saike He, Xiaolong Zheng, D. Zeng
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引用次数: 1

摘要

影响健康结果的公众情绪日益受到社交媒体的调节。现有文献主要关注网络结构对健康情绪传染的影响。然而,这些研究大多忽略了相互作用拓扑随时间的变化。事实上,个体间联系随时间的变化与个体属性有关。个体属性重塑连接拓扑的机制主要受两个原则之间的竞争支配,即同质性(建立或加强社会联系)和稳态(保持每个个体的社会联系的总强度)。目前还没有一种方法能够同时适应这两种相互竞争的影响。因此,我们提出了一个新的统计模型(H2模型,同质性和稳态模型)来描述同质性和稳态竞争支配的时间网络的演化。此外,我们考虑了外部冲击事件的中介作用,这使我们能够分离外源性混杂因素。对Twitter数据的评估表明,H2模型可以捕获长期情绪动态和外部冲击事件。在情绪预测中,H2在错误率方面始终优于现有方法。通过模型的冲击张量,我们成功地检测了几个典型事件,揭示了消极情绪的用户比积极情绪的用户更容易受到外部冲击事件的影响。我们的研究结果对网络社区健康情绪的监督和引导具有现实意义。
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The dynamics of health sentiments with competitive interactions in social media
Public sentiments affecting health outcomes are increasingly modulated by social media. Existing literature mainly focus on investigating how network structure affects the contagion of health sentiments. However, most of these studies neglect that the interaction topology change in time. In fact, the change of inter-individual connections over time is associated with individual attributes. The mechanism through which individual attributes reshapes the connection topology is mainly governed by the competition between two principles, i.e., homophily (establishing or reinforcing social connections) and homeostasis (preserving the total strength of social connections to each individual). No existing approaches are yet able to accommodate these two competing effects at the same time. We thus propose a new statistical model (H2 model, Homophily and Homestasis model) to depict the evolution of temporal network, which is governed by the competition of homophily and homeostasis. In addition, we consider the mediation effect of external shock events, which enables us to separate exogenous confounding factors. Evaluation on Twitter data suggests that H2 model can capture long-range sentiment dynamics and external shock events. In sentiment prediction, H2 consistently outperforms existing methods in terms of error rate. Through the model's shock tensor, we successfully detect several typical events, and reveal that users in negative emotions are more influenced by external shock events than those with positive emotions. Our findings have practical significance for those who supervise and guide health sentiments in online communities.
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