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Gov2Vec: Learning Distributed Representations of Institutions and Their Legal Text

机译:Gov2Vec:学习机构的分布式表示形式及其法律文本

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We compare policy differences across institutions by embedding representations of the entire legal corpus of each institution and the vocabulary shared across all corpora into a continuous vector space. We apply our method, Gov2Vec, to Supreme Court opinions, Presidential actions, and official summaries of Congressional bills. The model discerns meaningful differences between government branches. We also learn representations for more finegrained word sources: individual Presidents and (2-year) Congresses. The similarities between learned representations of Congresses over time and sitting Presidents are negatively correlated with the bill veto rate, and the temporal ordering of Presidents and Congresses was implicitly learned from only text. With the resulting vectors we answer questions such as: how does Obama and the 113th House differ in addressing climate change and how does this vary from environmental or economic perspectives? Our work illustrates vector-arithmetic-based investigations of complex relationships between word sources based on their texts. We are extending this to create a more comprehensive legal semantic map.
机译:我们通过将每个机构的整个法律语料库的表示形式和所有语料库之间共享的词汇表嵌入到一个连续的向量空间中,来比较各个机构之间的政策差异。我们将我们的方法Gov2Vec应用于最高法院的意见,总统诉讼和国会法案的官方摘要。该模型可识别政府部门之间的有意义差异。我们还会学习更多词汇来源的表示形式:个别总统和(2年制)国会。学到的代表大会随着时间的推移与现任总统之间的相似性与否决权率负相关,而总统和代表大会的时间顺序仅从文本中隐含地学习。通过得出的结果,我们可以回答以下问题:奥巴马和第113众议院在应对气候变化方面有何不同?从环境或经济角度来看,这有何不同?我们的工作说明了基于矢量算法的基于词源文本的词源之间复杂关系的研究。我们正在扩展它以创建更全面的法律语义图。

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