Out of nearly 70,000 bills introduced in the U.S. Congress from 2001 to 2015, only 2,513 were enacted. We developed a machine learning approach to forecasting the probability that any bill will become law. Starting in 2001 with the 107th Congress, we trained models on data from previous Congresses, predicted all bills in the current Congress, and repeated until the 113th Congress served as the test. For prediction we scored each sentence of a bill with a language model that embeds legislative vocabulary into a high-dimensional, semantic-laden vector space. This language representation enables our investigation into which words increase the probability of enactment for any topic. To test the relative importance of text and context, we compar...
Understanding politics is challenging because the politics take the influence from everything. Even ...
This paper develops a generalized supervised learning methodology for inferring roll call scores fro...
Natural Language Processing (NLP) is a sub-field of Artificial Intelligence (AI) that allows machine...
Improving the readability of legislation is an important and unresolved problem. Recently, researche...
Developments in natural language processing (NLP) techniques, convolutional neural networks (CNNs), ...
<p>A U.S. Congressional bill is a textual artifact that must pass through a series of hurdles to bec...
DRAFT – Please do not cite without permission. In this paper, we describe a method for statistical l...
In recent years, political science has witnessed an explosion of data. Political scientists have beg...
Organizing legislative texts into a hierarchy of legal topics enhances the access to legislation. Ma...
First, we infer topics from the collection of all floor speeches given by legislators in our process...
Building on developments in machine learning and prior work in the science of judicial prediction, w...
As most dedicated observers of voting bodies like the U.S. Supreme Court can attest, it is possible ...
This paper presents an analysis of the legislative speech records from the 101st-108th U.S. Congress...
We show how much various legislator attributes explain legislator’s issue-attention and how they com...
This paper proposes a new approach to investigating the substance of lawmaking. Only a very small pr...
Understanding politics is challenging because the politics take the influence from everything. Even ...
This paper develops a generalized supervised learning methodology for inferring roll call scores fro...
Natural Language Processing (NLP) is a sub-field of Artificial Intelligence (AI) that allows machine...
Improving the readability of legislation is an important and unresolved problem. Recently, researche...
Developments in natural language processing (NLP) techniques, convolutional neural networks (CNNs), ...
<p>A U.S. Congressional bill is a textual artifact that must pass through a series of hurdles to bec...
DRAFT – Please do not cite without permission. In this paper, we describe a method for statistical l...
In recent years, political science has witnessed an explosion of data. Political scientists have beg...
Organizing legislative texts into a hierarchy of legal topics enhances the access to legislation. Ma...
First, we infer topics from the collection of all floor speeches given by legislators in our process...
Building on developments in machine learning and prior work in the science of judicial prediction, w...
As most dedicated observers of voting bodies like the U.S. Supreme Court can attest, it is possible ...
This paper presents an analysis of the legislative speech records from the 101st-108th U.S. Congress...
We show how much various legislator attributes explain legislator’s issue-attention and how they com...
This paper proposes a new approach to investigating the substance of lawmaking. Only a very small pr...
Understanding politics is challenging because the politics take the influence from everything. Even ...
This paper develops a generalized supervised learning methodology for inferring roll call scores fro...
Natural Language Processing (NLP) is a sub-field of Artificial Intelligence (AI) that allows machine...