Developments in natural language processing (NLP) techniques, convolutional neural networks (CNNs), and long-short- term memory networks (LSTMs) allow for a state-of-the-art automated system capable of predicting the status (pass/fail) of congressional roll call votes. The paper introduces a custom hybrid model labeled "Predict Text Classification Network" (PTCN), which inputs legislation and outputs a prediction of the document's classification (pass/fail). The convolutional layers and the LSTM layers automatically recognize features from the input data's latent space. The PTCN's custom architecture provides elements enabling adaptation to the input's variance from adjustment to the kernel weights over time. On the document level, the mode...
For the majority of votes that take place in Congress, over 90% of legislators\u27 votes can be expl...
A simplified R interface to the DW-NOMINATE roll call scaling program. DW-NOMINATE (Dynamic Weighted...
Today, there are many text data processing and classification models available, and the demand for a...
Developments in natural language processing (NLP) techniques, convolutional neural networks (CNNs), ...
Out of nearly 70,000 bills introduced in the U.S. Congress from 2001 to 2015, only 2,513 were enacte...
AbstractThis paper presents a novel application in the emerging field of computational politics. Her...
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...
As most dedicated observers of voting bodies like the U.S. Supreme Court can attest, it is possible ...
Social media plays a crucial role in shaping the worldview during election campaigns. Social media h...
The Greek Parliament is a critical institution for the Greek Democracy, where important decisions ar...
Virtually every organization uses writing in one form or another to communicate with its internal an...
Improving the readability of legislation is an important and unresolved problem. Recently, researche...
This FYP project constitutes developing and evaluating deep learning models for 2 primary tasks – Re...
In an increasingly data-driven world, political scientists and statisticians are searching for new m...
For the majority of votes that take place in Congress, over 90% of legislators\u27 votes can be expl...
A simplified R interface to the DW-NOMINATE roll call scaling program. DW-NOMINATE (Dynamic Weighted...
Today, there are many text data processing and classification models available, and the demand for a...
Developments in natural language processing (NLP) techniques, convolutional neural networks (CNNs), ...
Out of nearly 70,000 bills introduced in the U.S. Congress from 2001 to 2015, only 2,513 were enacte...
AbstractThis paper presents a novel application in the emerging field of computational politics. Her...
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...
As most dedicated observers of voting bodies like the U.S. Supreme Court can attest, it is possible ...
Social media plays a crucial role in shaping the worldview during election campaigns. Social media h...
The Greek Parliament is a critical institution for the Greek Democracy, where important decisions ar...
Virtually every organization uses writing in one form or another to communicate with its internal an...
Improving the readability of legislation is an important and unresolved problem. Recently, researche...
This FYP project constitutes developing and evaluating deep learning models for 2 primary tasks – Re...
In an increasingly data-driven world, political scientists and statisticians are searching for new m...
For the majority of votes that take place in Congress, over 90% of legislators\u27 votes can be expl...
A simplified R interface to the DW-NOMINATE roll call scaling program. DW-NOMINATE (Dynamic Weighted...
Today, there are many text data processing and classification models available, and the demand for a...