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Bayesian inference for a skew-normal IRT model under the centred parameterization

机译:中心参数化下偏态正态IRT模型的贝叶斯推断

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Item response theory (IRT) comprises a set of statistical models which are useful in many fields, especially when there is interest in studying latent variables. These latent variables are directly considered in the Item Response Models (IRM) and they are usually called latent traits. A usual assumption for parameter estimation of the IRM, considering one group of examinees, is to assume that the latent traits are random variables which follow a standard normal distribution. However, many works suggest that this assumption does not apply in many cases. Furthermore, when this assumption does not hold, the parameter estimates tend to be biased and misleading inference can be obtained. Therefore, it is important to model the distribution of the latent traits properly. In this paper we present an alternative latent traits modeling based on the so-called skew-normal distribution; see Genton (2004). We used the centred parameterization, which was proposed by Azzalini (1985). This approach ensures the model identifiability as pointed out by Azevedo et al. (2009b). Also, a Metropolis-Hastings within Gibbs sampling (MHWGS) algorithm was built for parameter estimation by using an augmented data approach. A simulation study was performed in order to assess the parameter recovery in the proposed model and the estimation method, and the effect of the asymmetry level of the latent traits distribution on the parameter estimation. Also, a comparison of our approach with other estimation methods (which consider the assumption of symmetric normality for the latent traits distribution) was considered. The results indicated that our proposed algorithm recovers properly all parameters. Specifically, the greater the asymmetry level, the better the performance of our approach compared with other approaches, mainly in the presence of small sample sizes (number of examinees). Furthermore, we analyzed a real data set which presents indication of asymmetry concerning the latent traits distribution. The results obtained by using our approach confirmed the presence of strong negative asymmetry of the latent traits distribution.
机译:项目响应理论(IRT)包括一组统计模型,这些模型在许多领域都非常有用,尤其是当有兴趣研究潜在变量时。这些潜在变量在项目响应模型(IRM)中直接考虑,它们通常称为潜在特征。考虑一组考生,IRM参数估计的通常假设是假设潜在特征是遵循标准正态分布的随机变量。但是,许多工作表明这种假设在许多情况下并不适用。此外,当这种假设不成立时,参数估计往往会产生偏差,并可能导致误导性推断。因此,重要的是适当地对潜伏性状的分布进行建模。在本文中,我们提出了一种基于所谓的正态正态分布的替代性状特征模型。参见Genton(2004)。我们使用了由Azzalini(1985)提出的中心化参数化。这种方法可以确保模型的可识别性,如Azevedo等人所指出的。 (2009b)。此外,通过使用增强数据方法,建立了吉布斯采样中的都市空缺(MHWGS)算法用于参数估计。为了评估所提出的模型和估计方法中的参数恢复以及潜在特征分布的不对称水平对参数估计的影响,进行了仿真研究。此外,还考虑了我们的方法与其他估计方法(考虑潜在特征分布的对称正态性假设)的比较。结果表明,我们提出的算法可以正确恢复所有参数。特别是,不对称程度越高,与其他方法相比,我们的方法的性能越好,主要是在样本量较小(受检者人数)的情况下。此外,我们分析了一个真实的数据集,该数据集显示了有关潜在性状分布的不对称性。通过使用我们的方法获得的结果证实了潜在性状分布存在强烈的负不对称性。

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