This paper proposes innovations to parameter estimation in a generalised logistic regression model in the context of detecting differential item functioning in multi-item measurements. The two newly proposed iterative algorithms are compared with existing methods in a simulation study, and their use is demonstrated in a real data example. Additionally the study examines software implementation including specification of initial values for iterative algorithms, and asymptotic properties with estimation of standard errors. Overall, the proposed methods gave comparable results to existing ones and were superior in some scenarios.
翻译:本文件提议在发现多项测量中的差别项目功能时,在一般后勤回归模型中进行参数估计的创新办法,在模拟研究中将两个新提议的迭代算法与现有方法进行比较,并在一个真实数据实例中展示其使用情况;此外,研究还审查了软件实施情况,包括迭代算法初始值的规格,以及标准误差估计的无药用特性;总体而言,拟议方法与现有方法取得了可比结果,在某些情形中优异。</s>