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Using Odds Ratios to Detect Differential Item Functioning

机译:使用赔率检测差异项功能

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摘要

Differential item functioning (DIF) makes test scores incomparable and substantially threatens test validity. Although conventional approaches, such as the logistic regression (LR) and the Mantel–Haenszel (MH) methods, have worked well, they are vulnerable to high percentages of DIF items in a test and missing data. This study developed a simple but effective method to detect DIF using the odds ratio (OR) of two groups’ responses to a studied item. The OR method uses all available information from examinees’ responses, and it can eliminate the potential influence of bias in the total scores. Through a series of simulation studies in which the DIF pattern, impact, sample size (equal/unequal), purification procedure (with/without), percentages of DIF items, and proportions of missing data were manipulated, the performance of the OR method was evaluated and compared with the LR and MH methods. The results showed that the OR method without a purification procedure outperformed the LR and MH methods in controlling false positive rates and yielding high true positive rates when tests had a high percentage of DIF items favoring the same group. In addition, only the OR method was feasible when tests adopted the item matrix sampling design. The effectiveness of the OR method with an empirical example was illustrated.
机译:差异项功能(DIF)使得考试成绩无与伦比,并严重威胁了考试的有效性。尽管常规方法(例如逻辑回归(LR)和曼特尔-汉森(MH)方法)效果很好,但它们容易受到测试中DIF项的高百分比和数据丢失的影响。这项研究开发了一种简单有效的方法,即使用两组对被调查项目的反应的比值比(OR)来检测DIF。 OR方法会使用应试者回答中所有可用的信息,并且可以消除总体分数中存在偏差的潜在影响。通过一系列模拟研究,在其中操纵了DIF模式,影响,样本量(相等/不相等),纯化程序(有/无),DIF项目的百分比以及丢失数据的比例,OR方法的性能为评估并与LR和MH方法进行比较。结果显示,当测试中有较高百分比的DIF项目有利于同一组人群时,没有纯化程序的OR方法在控制假阳性率和产生高真实阳性率方面优于LR和MH方法。此外,当测试采用项目矩阵抽样设计时,仅OR方法可行。举例说明了OR方法的有效性。

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