Content analysis of political communication usually covers large amounts of material and makes the study of dynamics in issue salience a costly enterprise. In this article, we present a supervised machine learning approach for the automatic coding of policy issues, which we apply to news articles and parliamentary questions. Comparing computer-based annotations with human annotations shows that our method approaches the performance of human coders. Furthermore, we investigate the capability of an automatic coding tool, which is based on supervised machine learning, to generalize across contexts. We conclude by highlighting implications for methodological advances and empirical theory testing
To locate media frames is one of the biggest challenges facing academics in Political Communication ...
This paper proves that automatic translation of multilingual newspaper documents deters neither huma...
We introduce and assess the use of supervised learning in cross-domain topic classification. In this...
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...
We used machine learning to study policy issues and frames in political messages. With regard to fra...
Supervised machine learning (SML) provides us with tools to efficiently scrutinize large corpora of ...
In recent years, political science has witnessed an explosion of data. Political scientists have beg...
We introduce and assess the use of supervised learning in cross-domain topic classification. In this...
Messaging and the use of language is important to entities involved in politics in the United States...
Topics and frames are at the heart of various theories in communication science and other social sci...
Scholars have access to a rich source of political discourse via social media. Although computationa...
To build inputs for end-to-end machine learning estimates of the causal impacts of law, we consider ...
Topic models are widely used in natural language processing, allowing researchers to estimate the un...
First, we infer topics from the collection of all floor speeches given by legislators in our process...
To locate media frames is one of the biggest challenges facing academics in Political Communication ...
This paper proves that automatic translation of multilingual newspaper documents deters neither huma...
We introduce and assess the use of supervised learning in cross-domain topic classification. In this...
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...
We used machine learning to study policy issues and frames in political messages. With regard to fra...
Supervised machine learning (SML) provides us with tools to efficiently scrutinize large corpora of ...
In recent years, political science has witnessed an explosion of data. Political scientists have beg...
We introduce and assess the use of supervised learning in cross-domain topic classification. In this...
Messaging and the use of language is important to entities involved in politics in the United States...
Topics and frames are at the heart of various theories in communication science and other social sci...
Scholars have access to a rich source of political discourse via social media. Although computationa...
To build inputs for end-to-end machine learning estimates of the causal impacts of law, we consider ...
Topic models are widely used in natural language processing, allowing researchers to estimate the un...
First, we infer topics from the collection of all floor speeches given by legislators in our process...
To locate media frames is one of the biggest challenges facing academics in Political Communication ...
This paper proves that automatic translation of multilingual newspaper documents deters neither huma...
We introduce and assess the use of supervised learning in cross-domain topic classification. In this...