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Abstract
A probabilistic approach to build models for paired comparison experiments based on the comparison of two Pareto variables is considered. Analysis of the proposed model is carried out in classical as well as Bayesian frameworks. Informative and uninformative priors are employed to accommodate the prior information. Simulation study is conducted to assess the suitablily and performance of the model under theoretical conditions. Appropriateness of fit of the is also carried out. Entire inferential procedure is illustrated by comparing certain cricket teams using real dataset.
Keywords
Pair-wise comparisons
Pareto distribution
Bayesian Analysis
Worth parameter
ML estimates
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How to Cite
Abbas, N., & Aslam, M. A. (2017). Bayesian modeling to paired comparison data via the Pareto distribution. Pakistan Journal of Statistics and Operation Research, 13(4), 875-891. https://doi.org/10.18187/pjsor.v13i4.1924