Facultad de Psicología, Universidad Autónoma de Madrid, 28049-Madrid, Spain.
Span J Psychol. 2012 Mar;15(1):424-41. doi: 10.5209/rev_sjop.2012.v15.n1.37348.
This paper describes several simulation studies that examine the effects of capitalization on chance in the selection of items and the ability estimation in CAT, employing the 3-parameter logistic model. In order to generate different estimation errors for the item parameters, the calibration sample size was manipulated (N = 500, 1000 and 2000 subjects) as was the ratio of item bank size to test length (banks of 197 and 788 items, test lengths of 20 and 40 items), both in a CAT and in a random test. Results show that capitalization on chance is particularly serious in CAT, as revealed by the large positive bias found in the small sample calibration conditions. For broad ranges of theta, the overestimation of the precision (asymptotic Se) reaches levels of 40%, something that does not occur with the RMSE (theta). The problem is greater as the item bank size to test length ratio increases. Potential solutions were tested in a second study, where two exposure control methods were incorporated into the item selection algorithm. Some alternative solutions are discussed.
本文描述了几项模拟研究,这些研究采用三参数逻辑模型(3-parameter logistic model)考察了在 CAT 中,项目选择和能力估计时,因机遇而导致的资本化为零的影响。为了对项目参数产生不同的估计误差,我们操纵了校准样本量(N=500、1000 和 2000 个被试)和题库大小与测试长度的比例(题库大小分别为 197 和 788 个项目,测试长度分别为 20 和 40 个项目),这些都是在 CAT 和随机测试中进行的。结果表明,CAT 中机遇的资本化为零尤其严重,这从小样本校准条件下发现的较大正偏差中可以看出。对于 theta 的广泛范围,精度(渐近 Se)的高估达到 40%,而 RMSE(theta)则不会出现这种情况。随着题库大小与测试长度比例的增加,问题变得更加严重。在第二项研究中,我们测试了一些潜在的解决方案,在项目选择算法中纳入了两种暴露控制方法。本文还讨论了一些替代解决方案。