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Which Bills Are Lobbied? Predicting and Interpreting Lobbying Activity in the US

机译:哪个账单有淫乱?预测和解释美国的游说活动

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Using lobbying data from OpenSecrets.org, we offer several experiments applying machine learning techniques to predict if a piece of legislation (US bill) has been subjected to lobbying activities or not. We also investigate the influence of the intensity of the lobbying activity on how discernible a lobbied bill is from one that was not subject to lobbying. We compare the performance of a number of different models (logistic regression, random forest, CNN and LSTM) and text embedding representations (BOW, TF-IDF, GloVe, Law2Vec). We report results of above 0.85% ROC AUC scores, and 78% accuracy. Model performance significantly improves (95% ROC AUC, and 88% accuracy) when bills with higher lobbying intensity are looked at. We also propose a method that could be used for unlabelled data. Through this we show that there is a considerably large number of previously unlabelled US bills where our predictions suggest that some lobbying activity took place. We believe our method could potentially contribute to the enforcement of the US Lobbying Disclosure Act (LDA) by indicating the bills that were likely to have been affected by lobbying but were not filed as such.
机译:使用来自OpenSecres.org的游说数据,我们提供了几个应用机器学习技术的实验,以预测一段立法(美国账单)是否已经受到游说活动。我们还研究了游说活动强度对游览票据的声明,这些票据是从未受到游说的影响。我们比较许多不同模型(Logistic回归,随机林,CNN和LSTM)和文本嵌入表示(Bow,TF-IDF,手套,Law2Vec)的表现。我们报告ROC AUC得分高于0.85%的结果,准确性为78%。当看看具有较高游说强度的票据时,模型性能显着提高(95%的Roc Auc和88%的准确性)。我们还提出了一种可用于未标记数据的方法。通过这一点,我们表明,我们的预测建议发生一些大量未标记的美国账单,建议发生一些游说活动。我们认为,我们的方法可能会通过指示可能受到游说影响的账单来执行美国游说披露法案(LDA),而是没有提交。

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