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An Improved Strategy for Bayesian Estimation of the Reduced Reparameterized Unified Model

机译:简化的重新参数化统一模型的贝叶斯估计的改进策略

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摘要

A Bayesian formulation for a popular conjunctive cognitive diagnosis model, the reduced reparameterized unified model (rRUM), is developed. The new Bayesian formulation of the rRUM employs a latent response data augmentation strategy that yields tractable full conditional distributions. A Gibbs sampling algorithm is described to approximate the posterior distribution of the rRUM parameters. A Monte Carlo study supports accurate parameter recovery and provides evidence that the Gibbs sampler tended to converge in fewer iterations and had a larger effective sample size than a commonly employed Metropolis–Hastings algorithm. The developed method is disseminated for applied researchers as an R package titled “rRUM.”
机译:开发了贝叶斯公式,用于流行的联合认知诊断模型,即简化的重新参数化统一模型(rRUM)。 rRUM的新贝叶斯公式采用了潜在响应数据增强策略,可产生易于处理的完整条件分布。描述了吉布斯采样算法,以近似rRUM参数的后验分布。蒙特卡洛的研究支持准确的参数恢复,并提供了证据,表明吉布斯采样器趋于收敛,且迭代次数较少,有效样本量比常用的Metropolis-Hastings算法大。所开发的方法以名为“ rRUM”的R包的形式分发给应用研究人员。

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