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Maximum Marginal Likelihood Estimation of a Monotonic Polynomial Generalized Partial Credit Model with Applications to Multiple Group Analysis

机译:单调多项式广义部分信用模型的最大边际似然估计及其在多组分析中的应用

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摘要

We present a semi-parametric approach to estimating item response functions (IRF) useful when the true IRF does not strictly follow commonly used functions. Our approach replaces the linear predictor of the generalized partial credit model with a monotonic polynomial. The model includes the regular generalized partial credit model at the lowest order polynomial. Our approach extends Liang's (A semi-parametric approach to estimate IRFs, Unpublished doctoral dissertation, 2007) method for dichotomous item responses to the case of polytomous data. Furthermore, item parameter estimation is implemented with maximum marginal likelihood using the Bock-Aitkin EM algorithm, thereby facilitating multiple group analyses useful in operational settings. Our approach is demonstrated on both educational and psychological data. We present simulation results comparing our approach to more standard IRF estimation approaches and other non-parametric and semi-parametric alternatives.
机译:当真实的IRF不严格遵循常用功能时,我们提出一种半参数方法来估计项目响应函数(IRF)。我们的方法用单调多项式代替了广义部分信用模型的线性预测器。该模型包括最低阶多项式的常规广义部分信用模型。我们的方法扩展了Liang(用于估计IRF的半参数方法,未发表的博士学位论文,2007)方法,用于处理多态数据情况下的二分项目响应。此外,使用Bock-Aitkin EM算法以最大的边际可能性实现项目参数估计,从而便于在操作环境中进行有用的多组分析。我们的方法在教育和心理数据上都得到了证明。我们将仿真结果与我们的方法与更标准的IRF估计方法以及其他非参数和半参数替代方法进行比较。

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