ISSN 0439-755X
CN 11-1911/B
主办:中国心理学会
   中国科学院心理研究所
出版:科学出版社

心理学报 ›› 2007, Vol. 39 ›› Issue (04): 723-729.

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项目特征曲线等值的抽样误差

罗照盛;熊建华;漆书青;戴海琦;丁树良   

  1. 江西师范大学心理学系,南昌 330027
  • 收稿日期:2004-12-10 修回日期:1900-01-01 发布日期:2007-07-30 出版日期:2007-07-30
  • 通讯作者: 罗照盛

The Sampling Error of Item Response Theory Equating
With Item Characteristic Curve Methods

Luo Zhaosheng,Xiongjianhua,Qi Shuqing,DaiHaiqi,Ding Shuliang   

  1. Psychology Department, Education College, Jiangxi Normal University, Nanchang 330027, China
  • Received:2004-12-10 Revised:1900-01-01 Online:2007-07-30 Published:2007-07-30
  • Contact: Luo Zhaosheng

摘要: 现在,等值越来越受到各考试测验机构及测量学研究人员的重视,特别是项目反应理论等值的优越性更使他们有了信心。然而,很多人却没有注意到被试能力分布形态可能给等值结果带来的影响效果及程度。本研究以项目反应理论两级记分模型的项目参数等值在不同被试能力分布形态下的结果差异作为重点,探讨被试抽样偏差可能给项目特征曲线等值带来的误差问题。研究结果表明,被试能力分布形态会显著地影响项目参数等值的系数,特别地,能力分布的偏态系数与等值方程的截距存在显著的线性相关关系,但能力分布形态的变化对等值方程中斜率的影响并不明显

关键词: 项目特征曲线等值, 抽样误差, 能力分布形态

Abstract: Equating is a necessary procedure to the item bank construction and also to the longitudinal test results reporting. Equating based on item response theory (IRT) has gained much attention in recent decades according to its advantages over classical test theory (CTT) based strategy. Many nationwide tests had implemented IRT equating. But there are still many problems in the applications of IRT-based equating. First of all, researchers and practitioners must be aware of the factors that will affect the equating results. Many and many factors will cause errors of various equating methods. The available studies are mainly concerned about the standard errors of equating methods, but rarely about the bias that will occur when we use differently distributed ability sampling to equating parameters under IRT-based item characteristic curve (ICC) equating methods and under anchor-item data collection design. Bias from sampling will lead to misunderstood results. In this paper, sampling error to the IRT-based ICC equating will be addressed.
Under two-parameter logistic item response model, three pair-wise sets of item parameter data were simulated to be equated. Each data set includes 100 items. The distributions of item difficulty parameter are set to be normal distributed. The slope of the equating function were set to be 0.85, 1.00, 1.27 respectively, the intercept were 0.75, 0.60,-0.36 accordingly. Then 930 sets of ability parameter data were simulated to be differently distributed. That is, they had different skewness and kurtosis coefficients. With these simulated item and ability parameters, equating were conducted under item characteristic curve method for each data set.
The results show that equating coefficients are much different with differently distributed ability parameters. The slope coefficients of equating are much stable, while the intercept coefficients are much variable. Also, the relations between intercept coefficients with the ability distribution parameters are systematically proved.
With the results, it indicates that, firstly, the distribution of ability parameter will significantly affects the equating results under item characteristic curve method. Secondly and specifically, the differently distributed ability parameters will significantly and systematically affects the intercept coefficient of equating, but has much less effects on slope coefficient

Key words: item characteristic curve equating, sampling error, ability distribution

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