心理学
计算机化自适应测验
考试(生物学)
学业成绩
成就测验
数学教育
考试焦虑
掌握学习
成就的需要
社会心理学
认知心理学
发展心理学
标准化测试
心理测量学
古生物学
焦虑
精神科
生物
作者
Andrew J. Martin,Goran Lazendic
摘要
The present study investigated the implications of computer-adaptive testing (operationalized by way of multistage adaptive testing; MAT) and “conventional” fixed order computer testing for various test-relevant outcomes in numeracy, including achievement, test-relevant motivation and engagement, and subjective test experience. It did so among N = 12,736 Australian elementary (years 3 and 5) and secondary (years 7 and 9) school students. Multilevel modeling assessed the extent to which Level 1 (student) test condition (fixed order vs. adaptive), gender, and year group factors and Level 2 (school) socioeducational advantage, location, structure, and size factors predicted students’ test-relevant outcomes. In terms of statistically significant main effects, students in the computer-adaptive testing condition generated lower achievement error rates (i.e., higher measurement precision). Other statistically significant computer-adaptive test effects emerged as a function of year-level and gender, with positive effects of computer-adaptive testing being relatively greater for females and older students: these students achieved more highly (year 9 students), reported higher test-relevant motivation and engagement (year 9 students), and reported more positive subjective test experience (females and year 9 students). These findings (a) confirm that computer-adaptive testing yields greater achievement measurement precision, (b) suggest some positive test-relevant motivation and engagement effects from computer-adaptive testing, (c) counter claims that computer-adaptive testing reduces students’ test-relevant motivation, engagement, and subjective experience, and (d) suggest positive computer-adaptive testing effects for older students at a developmental stage when they are typically less motivated and engaged. (PsycINFO Database Record (c) 2018 APA, all rights reserved)
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