To build inputs for end-to-end machine learning estimates of the causal impacts of law, we consider the problem of automatically classifying cases by their policy impact. We propose and implement a semi-supervised multi-class learning model, with the training set being a hand-coded dataset of thousands of cases in over 20 politically salient policy topics. Using opinion text features as a set of predictors, our model can classify labeled cases by topic correctly 91% of the time. We then take the model to the broader set of unlabeled cases and show that it can identify new groups of cases by shared policy impact
Recent advances in Natural Language Processing and Machine Learning provide us with the tools to bui...
The contextual word embedding model, BERT, has proved its ability on downstream tasks with limited q...
This paper reviews the most recent literature on experiments with different Machine Learning, Deep L...
Content analysis of political communication usually covers large amounts of material and makes the s...
Content analysis of political communication usually covers large amounts of material and makes the s...
This paper reports preliminary work on developing methods automatically to index cases described in ...
Identifying important policy outputs has long been of interest to political scientists. In this work...
Research of judges and courts traditionally centers on judgments, treating each judgment as a unit o...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
Political scientists in general and public law specialists in particular have only recently begun to...
In recent years, political science has witnessed an explosion of data. Political scientists have beg...
Supervised machine learning (SML) provides us with tools to efficiently scrutinize large corpora of ...
When courts started publishing judgements, big data analysis (i.e. large-scale statistical analysis ...
Recent advances in Natural Language Processing and Machine Learning provide us with the tools to bui...
Organizing legislative texts into a hierarchy of legal topics enhances the access to legislation. Ma...
Recent advances in Natural Language Processing and Machine Learning provide us with the tools to bui...
The contextual word embedding model, BERT, has proved its ability on downstream tasks with limited q...
This paper reviews the most recent literature on experiments with different Machine Learning, Deep L...
Content analysis of political communication usually covers large amounts of material and makes the s...
Content analysis of political communication usually covers large amounts of material and makes the s...
This paper reports preliminary work on developing methods automatically to index cases described in ...
Identifying important policy outputs has long been of interest to political scientists. In this work...
Research of judges and courts traditionally centers on judgments, treating each judgment as a unit o...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
Political scientists in general and public law specialists in particular have only recently begun to...
In recent years, political science has witnessed an explosion of data. Political scientists have beg...
Supervised machine learning (SML) provides us with tools to efficiently scrutinize large corpora of ...
When courts started publishing judgements, big data analysis (i.e. large-scale statistical analysis ...
Recent advances in Natural Language Processing and Machine Learning provide us with the tools to bui...
Organizing legislative texts into a hierarchy of legal topics enhances the access to legislation. Ma...
Recent advances in Natural Language Processing and Machine Learning provide us with the tools to bui...
The contextual word embedding model, BERT, has proved its ability on downstream tasks with limited q...
This paper reviews the most recent literature on experiments with different Machine Learning, Deep L...