Random Utility Theory for Social Choice

Azari, Hossein, Parks, David, Xia, Lirong

Neural Information Processing Systems 

A special case that has received significant attention is the Plackett-Luce model, for which fast inference methods for maximum likelihood estimators are available. This paper develops conditions on general random utility models that enable fast inference within a Bayesian framework through MC-EM, providing concave loglikelihood functionsand bounded sets of global maxima solutions. Results on both real-world and simulated data provide support for the scalability of the approach andcapability for model selection among general random utility models including Plackett-Luce.

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