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Power Networks: A Novel Neural Architecture to Predict Power Relations

机译:电力网络:一种预测电力关系的新型神经结构

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Can language analysis reveal the underlying social power relations that exist between participants of an interaction? Prior work within NLP has shown promise in this area, but the performance of automatically predicting power relations using NLP analysis of social interactions remains wanting. In this paper, we present a novel neural architecture that captures manifestations of power within individual emails which are then aggregated in an order-preserving way in order to infer the direction of power between pairs of participants in an email thread. We obtain an accuracy of 80.4%, a 10.1% improvement over state-of-the-art methods, in this task. We further apply our model to the task of predicting power relations between individuals based on the entire set of messages exchanged between them; here also, our model significantly outperforms the 70.0% accuracy using prior state-of-the-art techniques, obtaining an accuracy of 83.0%.
机译:语言分析揭示了互动参与者之间存在的潜在的社会力量关系吗?在NLP中的事先工作已经显示在该领域的承诺,但是使用NLP对社交交互的分析自动预测电力关系的性能仍然希望。在本文中,我们提出了一种新颖的神经结构,其捕获各个电子邮件内的能量的表现,然后以订单保存方式聚合,以便推断电子邮件线程中的参与者对之间的电力方向。在这项任务中,我们获得了80.4%的准确性,最先进的方法,最先进的方法提高了10.1%。我们进一步将模型应用于基于在它们之间交换的整个消息的全套消息来预测个人之间的电力关系的任务;此外,我们的模型使用现有技术的技术来显着优于70.0%的精度,获得83.0%的准确性。

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