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Align Voting Behavior with Public Statements for Legislator Representation Learning

机译:将投票行为与立法者代表学习的公开声明

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Ideology of legislators is typically estimated by ideal point models from historical records of votes. It represents legislators and legislation as points in a latent space and shows promising results for modeling voting behavior. However, it fails to capture more specific attitudes of legislators toward emerging issues and is unable to model newly-elected legislators without voting histories. In order to mitigate these two problems, we explore to incorporate both voting behavior and public statements on Twitter to jointly model legislators. In addition, we propose a novel task, namely hashtag usage prediction to model the ideology of legislators on Twitter. In practice, we construct a heterogeneous graph for the legislative context and use relational graph neural networks to learn the representation of legislators with the guidance of historical records of their voting and hashtag usage. Experiment results indicate that our model yields significant improvements for the task of roll call vote prediction. Further analysis further demonstrates that legislator representation we learned captures nuances in statements.
机译:立法者的意识形态通常由选票的历史记录的理想点模型估算。它代表了立法者和立法,作为潜在的空间中的点,并显示了对策略行为建模的有希望的结果。 However, it fails to capture more specific attitudes of legislators toward emerging issues and is unable to model newly-elected legislators without voting histories.为了减轻这两个问题,我们探索在Twitter上纳入投票行为和公共声明,以共同模型立法者。此外,我们提出了一种小说任务,即Hashtag使用预测,以模拟推特上立法者的意识形态。在实践中,我们为立法情境构建异质图,并使用关系图形神经网络,以了解立法者的代表,以指导他们的投票和哈希特的历史记录。实验结果表明,我们的模型对滚动呼叫投票预测的任务产生了显着的改进。进一步的分析进一步展示了我们在陈述中学习了对细微法的立法者表示。

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