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Modeling online collective emotions through knowledge transfer

机译:通过知识转移模拟在线集体情感

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Online emotion diffusion is a compound process that involves interactions with multiple modalities. For instance, different behaviors influence the velocity and scale of emotion diffusion in online communities. Depicting and predicting massive online emotions helps to guide the trend of emotion evolution, thus avoiding unprecedented damages in crises. However, most existing work tries to depict and predict online emotions based on models not considering related modalities. There still lacks an efficient modeling framework that promotes performance by leveraging multi-modality knowledge, and quantifies the interactions among different modalities. In this paper, we elaborate a computational model to jointly depict online emotions and behaviors. By introducing a common structure, we can quantify how user emotions interact with the corresponding behaviors. To scale up to large dataset, we propose a hierarchical optimization algorithm to accelerate the convergence of the model. Evaluation on Sina Weibo dataset suggests that prediction error rate is lowered by 69 percent with the proposed model. In addition, the proposed model helps to explain how user emotions influence consequent behaviors in extreme situations.
机译:在线情感传播是一个复杂的过程,涉及与多种方式的交互。例如,不同的行为会影响在线社区中情绪传播的速度和规模。描述和预测大量的在线情绪有助于引导情绪演变的趋势,从而避免在危机中遭受前所未有的破坏。然而,大多数现有工作试图基于不考虑相关模态的模型来描绘和预测在线情绪。仍然缺乏有效的建模框架,该框架通过利用多模式知识来提高性能,并量化不同模式之间的交互。在本文中,我们阐述了一个计算模型来共同描述在线情绪和行为。通过引入一个通用结构,我们可以量化用户情绪与相应行为的交互方式。为了扩展到大型数据集,我们提出了一种层次优化算法来加速模型的收敛。对新浪微博数据集的评估表明,所提模型的预测错误率降低了69%。此外,提出的模型有助于解释用户情绪如何影响极端情况下的随之而来的行为。

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