Experimental research shows that while most voters have some form of spatial preferences, individuals differ in the type of spatial preferences they have: many voters prefer candidates closer to themselves in a policy space (proximity voting), others prefer candidates that are on the same side of an issue as themselves (directional voting), and still others prefer those who will move policy closest to them (discounted proximity voting). No existing theory explains this variation. I propose a theory based on the idea that people categorize candidates and have preferences defined over categories. As a voter gains political experience, he/she makes finer distinctions between candidates, and the set of categories grows. In this way, voters move from either–or conceptions of politics that approximate directional preferences toward more detailed conceptions consistent with proximity preferences, with some cases approximating discounted proximity voting as well. I show that the categorization model accurately predicts the observed frequencies of different voting types as well as some of the observed comparative statics and observed differences in the distribution of voting types across different policy areas.
Article navigation
30 June 2011
Research Article|
June 30 2011
Categorization-Based Spatial Voting* Available to Purchase
Nathan A. Collins
Nathan A. Collins
Santa Fe Institute
, 1399 Hyde Park Road, Santa Fe, NM 87501, USA
Search for other works by this author on:
The author thanks Jonathan Bendor, John Bullock, John Ferejohn, Laura Fortunato, Matt Jackson, Matt Levendusky, Ken Shotts, Jeremy Van Cleve and an anonymous reviewer for helpful comments on various versions of this paper.
Online ISSN: 1554-0634
Print ISSN: 1554-0626
© 2011 N. A. Collins
2011
N. A. Collins
Licensed re-use rights only
Quarterly Journal of Political Science (2011) 5 (4): 357–370.
Citation
Collins NA (2011), "Categorization-Based Spatial Voting*". Quarterly Journal of Political Science, Vol. 5 No. 4 pp. 357–370, doi: https://doi.org/10.1561/100.00010062
Download citation file:
Suggested Reading
Application of artificial neural networks for the categorization of mineral resources in a copper deposit in Peru
World Journal of Engineering (March,2025)
Related Chapters
HITS AND MISSES: MANAGERS’ (MIS)CATEGORIZATION OF COMPETITORS IN THE MANHATTAN HOTEL INDUSTRY
Geography and Strategy
Making Sense of Others in a Super-Diverse City: Ethnic Categorization in Public Space
Contributions from European Symbolic Interactionists: Conflict and Cooperation
From Categories to Categorization: A Social Perspective on Market Categorization
From Categories to Categorization: Studies in Sociology, Organizations and Strategy at the Crossroads
Recommended for you
These recommendations are informed by your reading behaviors and indicated interests.
