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Catch me if you can: A participant-level rumor detection framework via fine-grained user representation learning

机译:如果您可以:通过细粒度用户表示学习的参与级谣言检测框架

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摘要

Researchers have exerted tremendous effort in designing ways to detect and identify rumors automatically. Traditional approaches focus on feature engineering. They require lots of human actions and are difficult to generalize. Deep learning solutions come to help. However, they usually fail to capture the underlying structure of the rumor propagation and the influence of all participants involved in the spreading chain. In this study, we propose a novel participant-level rumor detection framework. It explicitly models and integrates various fine-grained user representations (i.e., user influence, susceptibility, and temporal information) of all participants from the propagation threads via deep representation learning. Experiments conducted on real-world datasets demonstrate a significant accuracy improvement of our approach. Theoretically, we contribute to the effective usage of data science and analytics for social information diffusion design, particularly rumor detection. Practically, our results can be used to improve the quality of rumor detection services for social platforms.
机译:研究人员在设计自动检测和识别谣言的方法方面施加了巨大的努力。传统方法专注于特色工程。他们需要大量的人类行为,并且难以概括。深度学习解决方案来帮助。然而,它们通常无法捕捉谣言传播的潜在结构以及蔓延链中涉及的所有参与者的影响。在这项研究中,我们提出了一种新的参与者级谣言检测框架。它明确地模型并通过深度表示学习将所有参与者的各种细粒度的用户表示(即用户影响,易感性和时间信息集成在一起。在现实世界数据集上进行的实验表明了我们对方法的显着提高。从理论上讲,我们有助于对社交信息扩散设计的有效使用数据科学和分析,特别是谣言检测。实际上,我们的结果可用于提高谣言检测服务的质量为社交平台。

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