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Bayesian analysis of multivariate probit models with surrogate outcome data

机译:具有替代结果数据的多元概率模型的贝叶斯分析

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摘要

A new class of parametric models that generalize the multivariate probit model and the errors-in-variables model is developed to model and analyze ordinal data. A general model structure is assumed to accommodate the information that is obtained via surrogate variables. A hybrid Gibbs sampler is developed to estimate the model parameters. To obtain a rapidly converged algorithm, the parameter expansion technique is applied to the correlation structure of the multivariate probit models. The proposed model and method of analysis are demonstrated with real data examples and simulation studies.
机译:开发了一类新的参数模型,该模型将多元概率模型和变量误差模型进行了概括,以对有序数据进行建模和分析。假定使用通用模型结构来容纳通过代理变量获得的信息。开发了混合Gibbs采样器以估计模型参数。为了获得快速收敛的算法,将参数扩展技术应用于多元概率模型的相关结构。通过实际数据示例和仿真研究证明了所提出的分析模型和方法。

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