A Unified Method of Evaluating Electoral Systems and Redistricting Plans

American Journal of Political Science, Vol. 38, No. 2, pp. 514-554, May 1994

41 Pages Posted: 17 Jan 2008

See all articles by Andrew Gelman

Andrew Gelman

Columbia University - Department of Statistics and Department of Political Science

Gary King

Harvard University

Abstract

We derive a unified statistical method with which one can produce substantially improved definitions and estimates of almost any feature of two-party electoral systems that can be defined based on district vote shares. Our single method enables one to calculate more efficient estimates, with more trustworthy assessments of their uncertainty, than each of the separate multifarious existing measures of partisan bias, electoral responsiveness, seats-votes curves, expected or predicted vote in each district in a legislature, the probability that a given party will win the seat in each district, the proportion of incumbents or others who will lose their seats, the proportion of women or minority candidates to be elected, the incumbency advantage and other causal effects, the likely effects on the electoral system and district votes of proposed electoral reforms, such as term limitations, campaign spending limits, and drawing majority-minority districts, and numerous others. To illustrate, we estimate the partisan bias and electoral responsiveness of the U.S. House of Representatives since 1900 and evaluate the fairness of competing redistricting plans for the 1992 Ohio state legislature.

Suggested Citation

Gelman, Andrew and King, Gary, A Unified Method of Evaluating Electoral Systems and Redistricting Plans. American Journal of Political Science, Vol. 38, No. 2, pp. 514-554, May 1994, Available at SSRN: https://ssrn.com/abstract=1084111

Andrew Gelman (Contact Author)

Columbia University - Department of Statistics and Department of Political Science ( email )

New York, NY 10027
United States
212-854-4883 (Phone)
212-663-2454 (Fax)

Gary King

Harvard University ( email )

1737 Cambridge St.
Institute for Quantitative Social Science
Cambridge, MA 02138
United States
617-500-7570 (Phone)

HOME PAGE: http://gking.harvard.edu

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