A Comparison of Covariates, Equating Designs, and Methods in Equating TIMSS 2019 Science Tests

Q3 Social Sciences Participatory Educational Research Pub Date : 2023-08-22 DOI:10.17275/per.23.74.10.5
Elif SEZER BAŞARAN, Ceren Mutluer, Mehtap Cakan
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Abstract

This research aimed to compare the equated scores by the methods based on classical test theory (CTT) and kernel equating, using covariates design (NEC) and anchor test design (NEAT). TIMSS 2019 science test scores equated by both Tucker, Levine true score, Levine observed score, equipercentile equating (pre-smoothing and post-smoothing) methods in CTT, and linear and equipercentile methods in kernel equating. Additionally, the covariates in NEC design were “home resources for learning,” “student confidence in science and mathematics,” “like learning science,” “instructional clarity in science lessons,” “math achievement,” “sex,” and “speaking the language of the test at home”. The equating results in NEC were compared with those in NEAT and EG. The participants comprised 1699 4th-grade students who attended the e-TIMSS 2019 in Canada, Singapore, and Chile. Results were analyzed according to equating errors and differences between equated scores. The research concluded that math achievement and home resources for learning could be used as covariates in NEC to equate the science test in case equating could not be done in the NEAT. However, when the other variables were used as covariates in NEC, the equated scores were very similar to the EG. Also, Tucker (CTT) and post-stratification (kernel) yielded similar equated scores in linear equating, and these methods were similarly different from kernel linear equating in EG. In equipercentile equating, the equated scores obtained from the post-smoothing (CTT) and EG were close to each other but slightly differed from post-stratification.
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TIMSS 2019科学测试中的协变量、等式设计和方法的比较
本研究旨在通过基于经典测试理论(CTT)和核等值的方法,使用协变量设计(NEC)和锚定测试设计(NEAT)来比较等值分数。TIMSS 2019科学测试分数由Tucker、Levine真实分数、Levine观察分数、CTT中的等百分比等值(前平滑和后平滑)方法以及核等值中的线性和等百分比方法等同。此外,NEC设计中的协变量是“家庭学习资源”、“学生对科学和数学的信心”、“像学习科学一样”、“科学课的教学清晰度”、“数学成绩”、“性别”和“在家说测试语言”。将NEC的等效结果与NEAT和EG的等效结果进行了比较。参与者包括1699名四年级学生,他们参加了加拿大、新加坡和智利的e-TIMSS 2019。根据相等错误和相等分数之间的差异对结果进行分析。研究得出的结论是,数学成绩和家庭学习资源可以在NEC中用作协变量,以在NEAT中无法进行等同的情况下等同于科学测试。然而,当其他变量在NEC中用作协变量时,等值分数与EG非常相似。此外,Tucker(CTT)和后分层(kernel)在线性等值中产生了相似的等值分数,并且这些方法与EG中的核线性等值有着相似的不同。在等百分比等值中,从后平滑(CTT)和EG获得的相等分数彼此接近,但与后分层略有不同。
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来源期刊
Participatory Educational Research
Participatory Educational Research Social Sciences-Education
CiteScore
1.50
自引率
0.00%
发文量
147
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