Tu Naidan, Joo Sean, Stark Stephen
Department of Psychological Sciences, Kansas State University, 422 Bluemont Hall, Manhattan, KS, 66506, USA.
Department of Educational Psychology, University of Kansas, Lawrence, KS, USA.
Behav Res Methods. 2025 Jun 23;57(7):207. doi: 10.3758/s13428-025-02712-4.
Multidimensional forced-choice (MFC) testing has been proposed as an alternative to single-statement (SS) Likert-type measures to reduce response biases in noncognitive measurement. Research progress has been made on MFC computerized adaptive testing (CAT) to improve testing efficiency. CAT enhances efficiency by successively selecting items that are most informative at each respondent's trait estimate. In MFC CAT, this causes some forced-choice items and the statements composing them to be frequently exposed while others are rarely used, which adversely affects test security and costs. This research developed an exposure control method for MFC CAT based on the multi-unidimensional pairwise preference model (MUPP; Stark et al. Applied Psychological Measurement, 29,184-203, 2005). Because the method was intended to prevent the overuse of the most informative items and statements, it tended to decrease overall measurement accuracy and precision. Thus, a second purpose of this research was to examine the extent to which these losses in accuracy and precision might be offset by incorporating collateral information. The effectiveness of the exposure control method and the incorporation of collateral information in MFC CAT were investigated in a Monte Carlo study that also manipulated test length and the correlation between dimensions. A byproduct of this research was an MFC CAT algorithm that improves test security and cost-effectiveness, while simultaneously maintaining measurement accuracy and precision of noncognitive constructs.
多维强制选择(MFC)测试已被提议作为单陈述(SS)李克特式测量的替代方法,以减少非认知测量中的反应偏差。在MFC计算机自适应测试(CAT)方面已取得研究进展,以提高测试效率。CAT通过依次选择在每个受访者的特质估计中最具信息性的项目来提高效率。在MFC CAT中,这会导致一些强制选择项目及其组成的陈述被频繁曝光,而其他项目则很少使用,这对测试安全性和成本产生不利影响。本研究基于多维度成对偏好模型(MUPP;Stark等人,《应用心理测量》,29,184 - 203,2005)开发了一种MFC CAT的曝光控制方法。由于该方法旨在防止过度使用最具信息性的项目和陈述,它往往会降低整体测量的准确性和精确性。因此,本研究的第二个目的是检验通过纳入附带信息,这些准确性和精确性的损失在多大程度上可能得到抵消。在一项蒙特卡罗研究中,研究了曝光控制方法和在MFC CAT中纳入附带信息的有效性,该研究还操纵了测试长度和维度之间的相关性。本研究的一个副产品是一种MFC CAT算法,它提高了测试安全性和成本效益,同时保持了非认知结构测量的准确性和精确性。