Multi-attribute compositional voting advice applications (MacVAAs): a methodology for educating and assisting voters and eliciting their preferences
Roxanne Korthals and
M. Levels
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M. Levels: Research Centre for Educ and Labour Mark, RS: SBE - MACIMIDE
No 4, ROA Research Memorandum from Maastricht University, Research Centre for Education and the Labour Market (ROA)
Abstract:
This paper introduces a technique to elicit voter preferences, by integrating multiattribute compositional analyses (Macs) with a voting advice application (VAA). The technique requires users to make trade-offs between different positions on a single issue, and between different issues. MacVAAs more closely resemble the electoral decision-making process in elections in which more than two parties participate than classic VAAs. MacVAA’s also overcomes the assumption of issue orthogonality and assumption of rationality that classic VAA erroneously make. Results of a field application of the technique during the 2012 Dutch parliamentary elections in 2012 are presented. Advantages and disadvantages are discussed.
Date: 2016-01-01
New Economics Papers: this item is included in nep-cdm and nep-pol
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https://cris.maastrichtuniversity.nl/ws/files/8998 ... 1bad081-ASSET1.0.pdf (application/pdf)
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Working Paper: Multi-attribute compositional voting advice applications (MacVAAs): a methodology for educating and assisting voters and eliciting their preferences (2016) 
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Persistent link: https://EconPapers.repec.org/RePEc:unm:umaror:2016004
DOI: 10.26481/umaror.2016004
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