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Modeling User Arguments, Interactions, and Attributes for Stance Prediction in Online Debate Forums

机译:在线辩论论坛中建模用户参数,交互和属性的姿态预测

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Online debate forums are important social media for people to voice their opinions and debate with each other. Mining user stances or viewpoints from these forums has been a popular research topic. However, most current work does not address an important problem: for a specific issue, there may not be many users participating and expressing their opinions. Despite the sparsity of user stances, users may provide rich side information; for example, users may write arguments to back up their stances, interact with each other, and provide biographical information. In this work, we propose an integrated model to leverage side information. Our proposed method is a regression-based latent factor model which jointly models user arguments, interactions, and attributes. Our method can perform stance prediction for both warm-start and cold-start users. We demonstrate in experiments that our method has promising results on both micro-level and macro-level stance prediction.
机译:在线辩论论坛是人们为人们发表意见和彼此辩论的重要社交媒体。来自这些论坛的挖掘用户立场或观点已经是一个流行的研究主题。然而,大多数当前的工作没有解决一个重要问题:对于特定问题,可能没有许多用户参与并表达他们的意见。尽管用户立场的稀疏性,但用户可以提供丰富的侧面信息;例如,用户可以编写备份阶段的参数,相互交互,并提供传记信息。在这项工作中,我们提出了一个集成模型来利用侧面信息。我们所提出的方法是基于回归的潜在因子模型,其共同模拟了用户参数,交互和属性。我们的方法可以对热启动和冷启动用户进行姿态预测。我们在实验中证明我们的方法在微观和宏观级别预测中具有有前途的结果。

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