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A generative model for rank data based on insertion sort algorithm

机译:基于插入排序算法的秩数据生成模型

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摘要

An original and meaningful probabilistic generative model for full rank data modelling is proposed. Rank data arise from a sorting mechanism which is generally unobservable for statisticians. Assuming that this process relies on paired comparisons, the insertion sort algorithm is known as being the best candidate in order to minimize the number of potential paired misclassifications for a moderate number of objects to be ordered. Combining this optimality argument with a Bernoulli event during a paired comparison step, a model that possesses desirable theoretical properties, among which are unimodality, symmetry and identifiability is obtained. Maximum likelihood estimation can also be performed easily through an EM or a SEM-Gibbs algorithm (depending on the number of objects to be ordered) by involving the latent initial presentation order of the objects. Finally, the practical relevance of the proposal is illustrated through its adequacy with several real data sets and a comparison with a standard rank data model.
机译:提出了一种新颖且有意义的概率生成模型用于全秩数据建模。排名数据是由分类机制产生的,对于统计学家来说通常是无法观察到的。假定此过程依赖于成对比较,则将插入排序算法称为最佳候选者,以最大程度地减少要订购的中等数量对象的潜在成对误分类的数量。在配对比较步骤中将该最优性参数与伯努利事件相结合,获得了具有理想理论特性的模型,其中包括单峰,对称和可识别性。还可以通过涉及对象的潜在初始表示顺序,通过EM或SEM-Gibbs算法(取决于要订购的对象数)轻松地执行最大似然估计。最后,通过与几个实际数据集的适当性以及与标准等级数据模型的比较,说明了该建议的实际相关性。

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