A Method of Automated Nonparametric Content Analysis for Social Science
Daniel Hopkins, Gary King. 2010.
"A Method of Automated Nonparametric Content Analysis for Social Science".
American Journal of Political Science, 54, 1, Pp. 229–247.

Abstract
The increasing availability of digitized text presents enormous opportunities for social scientists. Yet hand coding many blogs, speeches, government records, newspapers, or other sources of unstructured text is infeasible. Although computer scientists have methods for automated content analysis, most are optimized to classify individual documents, whereas social scientists instead want generalizations about the population of documents, such as the proportion in a given category. Unfortunately, even a method with a high percent of individual documents correctly classified can be hugely biased when estimating category proportions. By directly optimizing for this social science goal, we develop a method that gives approximately unbiased estimates of category proportions even when the optimal classifier performs poorly. We illustrate with diverse data sets, including the daily expressed opinions of thousands of people about the U.S. presidency. We also make available software that implements our methods and large corpora of text for further analysis. This article led to the formation of Crimson Hexagon.
See Also
- [Presentation] An Improved Method of Automated Nonparametric Content Analysis for Social Science (2016)
- [Dataset] Replication data for: A Method of Automated Nonparametric Content Analysis for Social Science
- [Paper] An Automated Information Extraction Tool For International Conflict Data With Performance As Good As Human Coders: A Rare Events Evaluation Design (2003)
- [Paper] Computer-Assisted Keyword and Document Set Discovery from Unstructured Text (2017)
- [Paper] General Purpose Computer-Assisted Clustering and Conceptualization (2011)
- [Paper] How Censorship in China Allows Government Criticism But Silences Collective Expression (2013)
- [Patent] Method and Apparatus for Selecting Clusterings to Classify A Predetermined Data Set (2013)
- [Patent] Participant Grouping for Enhanced Interactive Experience (2014)