Bayesian Nonmetric Successive Categories Multidimensional Scaling

  • Okada K
  • Mayekawa S
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Abstract

A Bayesian nonmetric successive categories multidimensional scaling (MDS) method is proposed. The proposed method can be seen as a Bayesian alternative to the maximum likelihood multidimensional successive scaling method proposed by Takane (1981), or as a nonmetric extension of Bayesian metric MDS by Oh and Raftery (2001). The model has a graded-response type measurement model part and a latent metric MDS part. All the parameters are jointly estimated using a Markov chain Monte Carlo (MCMC) estimation technique. Moreover, WinBUGS/OpenBUGS code for the proposed methodology is also given to aid applied researchers. The proposed method is illustrated through the analysis of empirical two-mode three-way similarity data.

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Okada, K., & Mayekawa, S. (2011). Bayesian Nonmetric Successive Categories Multidimensional Scaling. Behaviormetrika, 38(1), 17–31. https://doi.org/10.2333/bhmk.38.17

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