In the U.S. Congress, legislators can use active and passive cosponsorship to support bills. We show that these two types of cosponsorship are driven by two different motivations: the backing of political colleagues and the backing of the bill's content. To this end, we develop an Encoder+RGCN based model that learns legislator representations from bill texts and speech transcripts. These representations predict active and passive cosponsorship with an F1-score of 0.88. Applying our representations to predict voting decisions, we show that they are interpretable and generalize to unseen tasks.
翻译:在美国国会,立法者可以利用主动和被动的共同赞助来支持法案。我们表明,这两类共同赞助是两种不同的动机驱动的:政治同事的支持和法案内容的支持。为此,我们开发了基于Encoder+RGCN的模式,让立法者从法案文本和发言记录中了解法案文本和发言记录。这些表述预示积极和被动共同赞助,F1核心为0.88。 我们运用我们的陈述来预测投票决定,我们表明它们可以被解释,并被概括为不可见的任务。