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Big Data and Information Analytics (BDIA)
 

A testbed to enable comparisons between competing approaches for computational social choice
Pages: 309 - 340, Issue 4, October 2016

doi:10.3934/bdia.2016013      Abstract        References        Full text (1171.6K)           Related Articles

John A. Doucette - University of Waterloo & New College of Florida, 5800 Bayshore Road, Sarasota, FL 34234, United States (email)
Robin Cohen - University of Waterloo, 200 University Avenue West, Waterloo, ON N2L 3G1, Canada (email)

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