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No! Formal Theory, Causal Inference, and Big Data Are Not Contradictory Trends in Political Science

Published online by Cambridge University Press:  31 December 2014

Burt L. Monroe
Affiliation:
Pennsylvania State University
Jennifer Pan
Affiliation:
Harvard University
Margaret E. Roberts
Affiliation:
University of California, San Diego
Maya Sen
Affiliation:
Harvard University
Betsy Sinclair
Affiliation:
Washington University in St. Louis

Abstract

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Type
Symposium: Big Data, Causal Inference, and Formal Theory: Contradictory Trends in Political Science?
Copyright
Copyright © American Political Science Association 2015 

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References

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