A simple generative model for rank ordered data with ties is presented. The model is based on ordering geometric latent variables and can be seen as the discrete counterpart of the Plackett-Luce (PL) model, a popular, relatively tractable model for permutations. The model, which will be referred to as the GPL model, for generalized (or geometric) Plackett-Luce model, contains the PL model as a limiting special case. A closed form expression for the likelihood is derived. With a focus on Bayesian inference via data augmentation, simple Gibbs sampling and EM algorithms are derived for both the general case of multiple comparisons and the special case of paired comparisons. The methodology is applied to several real data examples. The examples highlight the flexibility of the GPL model to cope with a range of data types, the simplicity and efficiency of the inferential algorithms, and the ability of the GPL model to naturally facilitate predictive inference due to its simple generative construction.
翻译:该模型以排序几何潜伏变量为基础,可被视为Plackett-Luce(Plackett-Luce)模型的离散对应方,该模型为通用(或几何)Plackett-Luce模型,称为GPL模型,作为通用(或几何)Plackett-Luce模型,包含PLC模型,作为限制性的特例。该模型为可能性提供了封闭形式的表达方式。在通过数据增强的Bayesian推理中,为多重比较的一般案例和配对比较的特殊案例都提供了简单的Gibbs抽样和EM算法。该方法适用于若干真实数据实例。这些例子突出表明了GLP模型在应对一系列数据类型、推断算的简单性和效率方面的灵活性,以及GPL模型因其简单的基因化构建而自然地便利预测推理的能力。