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Multivariate Higher-Order IRT Model and MCMC Algorithm for Linking Individual Participant Data From Multiple Studies

机译:多元高阶IRT模型和MCMC算法,用于链接来自多个研究的单个参与者数据

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摘要

Many clinical and psychological constructs are conceptualized to have multivariate higher-order constructs that give rise to multidimensional lower-order traits. Although recent measurement models and computing algorithms can accommodate item response data with a higher-order structure, there are few measurement models and computing techniques that can be employed in the context of complex research synthesis, such as meta-analysis of individual participant data or integrative data analysis. The current study was aimed at modeling complex item responses that can arise when underlying domain-specific, lower-order traits are hierarchically related to multiple higher-order traits for individual participant data from multiple studies. We formulated a multi-group, multivariate higher-order item response theory (HO-IRT) model from a Bayesian perspective and developed a new Markov chain Monte Carlo (MCMC) algorithm to simultaneously estimate the (a) structural parameters of the first- and second-order latent traits across multiple groups and (b) item parameters of the model. Results from a simulation study support the feasibility of the MCMC algorithm. From the analysis of real data, we found that a bivariate HO-IRT model with different correlation/covariance structures for different studies fit the data best, compared to a univariate HO-IRT model or other alternate models with unreasonable assumptions (i.e., the same means and covariances across studies). Although more work is needed to further develop the method and to disseminate it, the multi-group multivariate HO-IRT model holds promise to derive a common metric for individual participant data from multiple studies in research synthesis studies for robust inference and for new discoveries.
机译:许多临床和心理构造都被概念化为具有多元高阶构造,从而引起多维低阶特征。尽管最近的度量模型和计算算法可以容纳具有更高阶结构的项目响应数据,但是很少有度量模型和计算技术可用于复杂的研究综合(例如,单个参与者数据的荟萃分析或集成)数据分析。当前的研究旨在对复杂的项目响应进行建模,当来自多个研究的单个参与者数据的基础领域特定的低阶特征与多个高阶特征在层次上相关时,可能会出现这种情况。我们从贝叶斯角度构建了多组,多元高阶项响应理论(HO-IRT)模型,并开发了一种新的马尔可夫链蒙特卡洛(MCMC)算法来同时估算(a)第一和第二结构参数跨多个组的二阶潜在特征和(b)模型的项目参数。仿真研究的结果证明了MCMC算法的可行性。通过对真实数据的分析,我们发现,与单变量HO-IRT模型或其他具有不合理假设(即,相同的)的替代模型相比,针对不同研究具有不同相关/协方差结构的双变量HO-IRT模型最适合数据研究的均值和协方差)。尽管需要更多的工作来进一步开发该方法并进行传播,但是多组多元HO-IRT模型有望为研究综合研究中的多项研究得出的单个参与者数据提供一个通用指标,以进行可靠的推断和新发现。

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