Enhancing Precision in Predicting Magnitude of Differential Item Functioning: An M-DIF Pretrained Model Approach.

IF 2.1 3区 心理学 Q2 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
Shan Huang, Hidetoki Ishii
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引用次数: 0

Abstract

Despite numerous studies on the magnitude of differential item functioning (DIF), different DIF detection methods often define effect sizes inconsistently and fail to adequately account for testing conditions. To address these limitations, this study introduces the unified M-DIF model, which defines the magnitude of DIF as the difference in item difficulty parameters between reference and focal groups. The M-DIF model can incorporate various DIF detection methods and test conditions to form a quantitative model. The pretrained approach was employed to leverage a sufficiently representative large sample as the training set and ensure the model's generalizability. Once the pretrained model is constructed, it can be directly applied to new data. Specifically, a training dataset comprising 144 combinations of test conditions and 144,000 potential DIF items, each equipped with 29 statistical metrics, was used. We adopt the XGBoost method for modeling. Results show that, based on root mean square error (RMSE) and BIAS metrics, the M-DIF model outperforms the baseline model in both validation sets: under consistent and inconsistent test conditions. Across all 360 combinations of test conditions (144 consistent and 216 inconsistent with the training set), the M-DIF model demonstrates lower RMSE in 357 cases (99.2%), illustrating its robustness. Finally, we provided an empirical example to showcase the practical feasibility of implementing the M-DIF model.

提高项目功能差异幅度预测的精确度:一种 M-DIF 预训练模型方法。
尽管关于差异项目功能(DIF)大小的研究不胜枚举,但不同的 DIF 检测方法对效应大小的定义往往不一致,而且未能充分考虑测试条件。为了解决这些局限性,本研究引入了统一的 M-DIF 模型,该模型将 DIF 的大小定义为参照组和焦点组之间项目难度参数的差异。M-DIF 模型可以将各种 DIF 检测方法和测试条件结合起来,形成一个定量模型。采用预训练方法是为了利用具有足够代表性的大样本作为训练集,确保模型的普适性。一旦构建了预训练模型,就可以直接应用于新数据。具体来说,训练数据集包括 144 种测试条件组合和 144,000 个潜在的 DIF 项目,每个项目都有 29 个统计指标。我们采用 XGBoost 方法进行建模。结果表明,根据均方根误差(RMSE)和 BIAS 指标,M-DIF 模型在两个验证集(一致和不一致测试条件下)的表现都优于基线模型。在所有 360 种测试条件组合(144 种与训练集一致,216 种与训练集不一致)中,M-DIF 模型在 357 种情况下(99.2%)显示出较低的 RMSE,这说明了它的鲁棒性。最后,我们提供了一个实证案例来展示实施 M-DIF 模型的实际可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Educational and Psychological Measurement
Educational and Psychological Measurement 医学-数学跨学科应用
CiteScore
5.50
自引率
7.40%
发文量
49
审稿时长
6-12 weeks
期刊介绍: Educational and Psychological Measurement (EPM) publishes referred scholarly work from all academic disciplines interested in the study of measurement theory, problems, and issues. Theoretical articles address new developments and techniques, and applied articles deal with innovation applications.
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