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The class of cub models: statistical foundations, inferential issues and empirical evidence

机译:幼崽模型的类别:统计基础,推论性问题和经验证据

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This paper discusses a general framework for the analysis of rating and preference data that is rooted on a class of mixtures of discrete random variables. These models have been extensively studied and applied in the last 15 years thanks to a flexible and parsimonious parametrization of data generating process and to prompt interpretation of results. The approach considers the final response as the combination of feeling and uncertainty, by allowing for finer model specifications to include refuge options, response styles and possible overdispersion, also in relation to subjects' and objects' covariates. The article establishes the state of art of the research inherent to this paradigm, in terms of methodology, inferential procedures and fitting measures, by emphasizing capabilities and limitations yet establishing new findings. In particular, explicative power and predictive performances of cub statistical models for ordinal data are examined and new topics that could boost and support the modelling of uncertainty in this framework are provided. Possible developments are outlined throughout the whole presentation and final comments conclude the paper.
机译:本文讨论了一种基于分级离散随机变量的混合类来分析评级和偏好数据的通用框架。由于数据生成过程的灵活和简约的参数化以及对结果的迅速解释,这些模型在过去的15年中得到了广泛的研究和应用。该方法通过允许更精细的模型规范包括避难所选项,响应样式和可能的过度分散,以及与对象和对象的协变量有关的方式,将最终响应视为感觉和不确定性的结合。本文通过强调能力和局限性并建立新的发现,建立了该范式固有的研究现状,包括方法论,推论程序和拟合方法。特别是,对序数数据的幼崽统计模型的解释能力和预测性能进行了研究,并提供了可以增强和支持此框架中不确定性建模的新主题。整个演示文稿中概述了可能的发展,最后总结了本文的意见。

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