2019
DOI: 10.1111/psq.12629
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Measuring the Content of Presidential Policy Making: Applying Text Analysis to Executive Branch Directives

Abstract: The executive branch produces huge quantities of text data: policy‐driving documents such as executive orders, national security directives, and agency regulations; procedural documents such as notices of proposed rule making, meeting transcripts, and presidential daily schedules; and public relations documents including press releases, veto statements, and social media posts. Political science is increasingly turning to methods of automated text analysis to rigorously interrogate such corpora. These tools hav… Show more

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Cited by 8 publications
(8 citation statements)
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“…However, as is typical in studies of this type, our interest is precisely to read the government's policy position from a corpus consisting of its own statements. This is consistent with studies that analyze political texts from unilateral sources such as party manifestos ( Eder et al, 2017 ), party elite interviews ( Ecker et al, 2022 ), and public pronouncements or speeches by key political actors such as chief executives ( Kaufman, 2020 ; Panao and Pernia, 2022 ).…”
Section: Data Variables and Analytical Approachsupporting
confidence: 85%
“…However, as is typical in studies of this type, our interest is precisely to read the government's policy position from a corpus consisting of its own statements. This is consistent with studies that analyze political texts from unilateral sources such as party manifestos ( Eder et al, 2017 ), party elite interviews ( Ecker et al, 2022 ), and public pronouncements or speeches by key political actors such as chief executives ( Kaufman, 2020 ; Panao and Pernia, 2022 ).…”
Section: Data Variables and Analytical Approachsupporting
confidence: 85%
“…For extensive collections of texts, they also advocate for machine learning in the legal domain as tools to accelerate analysis and give insights about the content of documents, though still not replacing humans, only facilitating some processes. Kaufman [ 6 ] in turn presents potential applications of machine learning in the future of political science analysis in the Executive Branch of the United States.…”
Section: Related Workmentioning
confidence: 99%
“…Computational tools also pave the way to a new era of technological innovation in the realm of politics. In fact, current computational tools act as a novel utility belt to evaluate and validate long-term theories [ 6 ] in the field of Political Science. They also facilitate the citizens’ access to federal government decisions and enhance the public control of the executive direct actions.…”
Section: Introductionmentioning
confidence: 99%
See 1 more Smart Citation
“…Finally, we introduce two novel datasets that allow us to examine when presidents draw public attention to the administrative state and how executive agencies organize regulatory policy. Just as congressional and judicial scholars have utilized institutional text to shed light on key questions in political science, we analyze the Public Papers of the Presidents and administrative records to identify new descriptive patterns in executive behavior (see Kaufman 2020). By examining the text of the executive branch, we shed light on the nuanced dynamics of political control.…”
mentioning
confidence: 99%