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Jolanta Kisielewska; Paul Millin; Neil Rice; Jose Miguel Pego; Steven Burr; Michal Nowakowski; Thomas Gale – Education and Information Technologies, 2024
Between 2018-2021, eight European medical schools took part in a study to develop a medical knowledge Online Adaptive International Progress Test. Here we discuss participants' self-perception to evaluate the acceptability of adaptive vs non-adaptive testing. Study participants, students from across Europe at all stages of undergraduate medical…
Descriptors: Medical Students, Medical Education, Student Attitudes, Self Efficacy
Yoshioka, Sérgio R. I.; Ishitani, Lucila – Informatics in Education, 2018
Computerized Adaptive Testing (CAT) is now widely used. However, inserting new items into the question bank of a CAT requires a great effort that makes impractical the wide application of CAT in classroom teaching. One solution would be to use the tacit knowledge of the teachers or experts for a pre-classification and calibrate during the…
Descriptors: Student Motivation, Adaptive Testing, Computer Assisted Testing, Item Response Theory
Soland, James – Applied Measurement in Education, 2018
This study estimated male-female and Black-White achievement gaps without accounting for low test motivation, then compared those estimates to ones that used several approaches to addressing rapid guessing. Researchers investigated two issues: (1) The differences in rates of rapid guessing across subgroups and (2) How much achievement gap…
Descriptors: Guessing (Tests), Achievement Gap, Student Motivation, Learner Engagement
Economides, Anastasios A. – Computers in the Schools, 2009
Feedback is an important educational tool that can support learning and assessment. This article describes types of conative feedback that can support the student's conation, will, volition, or motivation. Any of these types of feedback can be presented to the student before, during, or after an educational activity or a test question.…
Descriptors: Feedback (Response), Computer Assisted Testing, Adaptive Testing, Student Motivation
Ash, Katie – Education Week, 2008
This article discusses the growing interest in computer-adaptive testing, which supporters say can help guide instruction, increase student motivation, and determine the best use of resources for districts. This method of testing shortens the test by not asking high-achieving students questions that are too easy for them, and likewise not giving…
Descriptors: Adaptive Testing, Computer Assisted Testing, Student Evaluation, Student Motivation
Hol, A. Michiel; Vorst, Harrie C. M.; Mellenbergh, Gideon J. – Applied Psychological Measurement, 2007
In a randomized experiment (n = 515), a computerized and a computerized adaptive test (CAT) are compared. The item pool consists of 24 polytomous motivation items. Although items are carefully selected, calibration data show that Samejima's graded response model did not fit the data optimally. A simulation study is done to assess possible…
Descriptors: Student Motivation, Simulation, Adaptive Testing, Computer Assisted Testing

Dalton, David W.; Goodrum, David A. – Journal of Research on Computing in Education, 1991
Fifth and sixth grade children were assigned to three pretesting conditions: a full-length pretest, an adaptive pretest that exited learners when nonmastery was indicated, and a no pretest control. Learners in the adaptive treatment demonstrated higher levels of performance on the posttest and had greater motivation to continue the instruction.…
Descriptors: Academic Achievement, Adaptive Testing, Computer Assisted Testing, Elementary Education
Kim, JinGyu; McLean, James E. – 1995
The purpose of the study was to investigate the effects of test motivation on estimated ability, test anxiety, and attitudes toward computerized adaptive testing (CAT). Korean college students (n=208) were given the Math Aptitude Test, Math Self-Concept Scale, Math Test Anxiety Scale, Computer Competence Instrument, Computer Anxiety Scale, and…
Descriptors: Ability, Adaptive Testing, Aptitude Tests, College Students
Wise, Steven L. – 1997
The perspective of the examinee during the administration of a computerized adaptive test (CAT) is discussed, focusing on issues of test development. Item review is the first issue discussed. Virtually no CATs provide the opportunity for the examinee to go back and review, and possibly change, answers. There are arguments on either side of the…
Descriptors: Adaptive Testing, Computer Assisted Testing, Computer Attitudes, Equal Education
Prestwood, J. Stephen; Weiss, David J. – 1978
Volunteer college students were assigned to one of six computer administered vocabulary tests, one half with immediate knowledge of results (KR) after responding to each item, and the other half without knowledge of results. The six tests were designed to be at one of three levels of difficulty and consisted either of 50 preselected items…
Descriptors: Academic Ability, Adaptive Testing, Anxiety, Computer Assisted Testing

Vispoel, Walter P.; Coffman, Don D. – Applied Measurement in Education, 1994
Computerized-adaptive (CAT) and self-adapted (SAT) music listening tests were compared for efficiency, reliability, validity, and motivational benefits with 53 junior high school students. Results demonstrate trade-offs, with greater potential motivational benefits for SAT and greater efficiency for CAT. SAT elicited more favorable responses from…
Descriptors: Adaptive Testing, Computer Assisted Testing, Efficiency, Item Response Theory
Legg, Sue M.; Buhr, Dianne C. – 1990
Possible causes of a 16-point mean score increase for the computer adaptive form of the College Level Academic Skills Test (CLAST) in reading over the paper-and-pencil test (PPT) in reading are examined. The adaptive form of the CLAST was used in a state-wide field test in which reading, writing, and computation scores for approximately 1,000…
Descriptors: Adaptive Testing, College Entrance Examinations, Community Colleges, Comparative Testing
Wise, Steven L. – 1997
Computerized adaptive testing (CAT) has become increasingly common in large-scale testing programs. This paper considers relevant practical issues that are likely to be faced by the developers and managers of a CAT program. The first cluster of issues is that of item pool development and maintenance. It includes such considerations as item pool…
Descriptors: Adaptive Testing, Computer Assisted Testing, Computer Attitudes, Equal Education
Church, Austin T.; Weiss, David J. – 1980
A pilot study on the development and administration of a test using a spatial reasoning problem, the 15-puzzle, is described. The test utilizes on-line capabilities of a real-time computer to record an examinee's progress on each problem through a sequence of problem-solving "moves", and to collect additional on-line data that might be…
Descriptors: Adaptive Testing, Cognitive Measurement, Computer Assisted Testing, Difficulty Level