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A spatial interaction model of vote dispersion
Institution:1. Department of Political Economy and Institute of Middle Eastern Studies, King''s College London, Bush House North East Wing, 30 Aldwych, London, WC2B 4BG, UK;2. Department of Political Science, Aarhus University, Bartholins Allé 7, DK-8000 Aarhus C, Denmark;3. LSE Middle East Centre, London School of Economics and Political Science, Pankhurst House, Clement''s Inn, WC2A 2AZ London, UK;4. American University of Beirut, Department of Political Studies and Public Administration (PSPA), Bliss Street, Hamra, Beirut, Lebanon;1. Department of Geography and the Environment, University of Texas at Austin, 1 University Station A3100, Austin, TX, 78712, United States;2. Department of International Development Studies, Dalhousie University, Marion McCain Building, 6135 University Ave., PO Box 15000, Halifax, NS, Canada, B3H 4R2;3. Centro de Investigaciones y Estudios Superiores en Antropología Social (CIESAS) Sede Occidente, Av España 1359, Moderna, 44190, Guadalajara, Jal, Mexico;4. Department of Geography, Texas State University, 601 University Dr, San Marcos, TX, 78666, United States
Abstract:How do votes disperse through a territory? Studies of spatial voting patterns have largely focused on the influence of local factors on voting. The “Friends and Neighbors” model (Key (1949)) explains the advantage of candidates running for office in the locality with which they are associated (Arzheimer and Evans (2012, 2014): Collignon and Sajuria (2018); Horiuchi et al. (2018); Jankowski (2016); Hunt (2020); Munis (2021)), and the “neighbor” effect helps to explain why votes spread. More recent studies have found that the dispersion of votes decreases with distance (Put et al. (2020); Arzheimer and Evans (2012)). However, we know little about how spatial patterns of voting emerge or the mechanism behind the neighbor effect. We argue that this effect depends on the neighbors’ access to information about a candidate, which is constrained by the way information flows. Although scholars have argued that information is a relevant driver explaining the dispersion of votes (Bowler et al. (1993); Arzheimer and Evans (2012); Evans et al. (2017); Campbell, Cowley, Vivyan, and Wagner (2019)), no research has examined the relevance of the network through which information flows. We propose that a spatial interaction model (Wilson (1971)) allows us to predict where this information flows or the voting pattern that will form. Taking advantage of a quasi-natural experiment in Brazilian legislative elections in 1974 and 1978, we show that votes spread through areas of influence created by a hierarchy of cities based on the flows of exchanges among them, including information. We then use our spatial interaction model to predict voting patterns in the elections of 1978 using data from the 1974 elections. Our findings show that the spatial interaction model results fit the data quite well and can help predict spatial patterns of voting.
Keywords:Spatial interaction models  Vote dispersion  Friends and neighbors
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