James Honaker
Harvard University
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Featured researches published by James Honaker.
Sociological Methods & Research | 2017
Matthew Blackwell; James Honaker; Gary King
Although social scientists devote considerable effort to mitigating measurement error during data collection, they often ignore the issue during data analysis. And although many statistical methods have been proposed for reducing measurement error-induced biases, few have been widely used because of implausible assumptions, high levels of model dependence, difficult computation, or inapplicability with multiple mismeasured variables. We develop an easy-to-use alternative without these problems; it generalizes the popular multiple imputation (MI) framework by treating missing data problems as a limiting special case of extreme measurement error and corrects for both. Like MI, the proposed framework is a simple two-step procedure, so that in the second step researchers can use whatever statistical method they would have if there had been no problem in the first place. We also offer empirical illustrations, open source software that implements all the methods described herein, and a companion article with technical details and extensions.
Annals of The American Academy of Political and Social Science | 2015
Mercè Crosas; Gary King; James Honaker; Latanya Sweeney
The vast majority of social science research uses small (megabyte- or gigabyte-scale) datasets. These fixed-scale datasets are commonly downloaded to the researcher’s computer where the analysis is performed. The data can be shared, archived, and cited with well-established technologies, such as the Dataverse Project, to support the published results. The trend toward big data—including large-scale streaming data—is starting to transform research and has the potential to impact policymaking as well as our understanding of the social, economic, and political problems that affect human societies. However, big data research poses new challenges to the execution of the analysis, archiving and reuse of the data, and reproduction of the results. Downloading these datasets to a researcher’s computer is impractical, leading to analyses taking place in the cloud, and requiring unusual expertise, collaboration, and tool development. The increased amount of information in these large datasets is an advantage, but at the same time it poses an increased risk of revealing personally identifiable sensitive information. In this article, we discuss solutions to these new challenges so that the social sciences can realize the potential of big data.
Sociological Methods & Research | 2017
Matthew Blackwell; James Honaker; Gary King
We extend a unified and easy-to-use approach to measurement error and missing data. In our companion article, Blackwell, Honaker, and King give an intuitive overview of the new technique, along with practical suggestions and empirical applications. Here, we offer more precise technical details, more sophisticated measurement error model specifications and estimation procedures, and analyses to assess the approach’s robustness to correlated measurement errors and to errors in categorical variables. These results support using the technique to reduce bias and increase efficiency in a wide variety of empirical research.
American Political Science Review | 2008
Gary King; James Honaker; Anne M. Joseph; Kenneth Scheve
Journal of Statistical Software | 2011
James Honaker; Gary King; Matthew Blackwell
American Journal of Political Science | 2010
James Honaker; Gary King
Political Analysis | 2002
James Honaker; Jonathan N. Katz; Gary King
Archive | 2008
James Honaker
Archive | 1969
Matthew Blackwell; James Honaker; Gary King
Archive | 2003
Drew A. Linzer; James Honaker