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Kacprzyk, Joanna; Parsons, Martin; Maguire, Patricia B.; Stewart, Gavin S. – Irish Educational Studies, 2019
The optimum assessment structure measures student knowledge accurately and without bias. In this study, the performance of the first-year undergraduate science students from the University College Dublin was evaluated to test the gender equality of the assessment structure in place. Results of male and female students taking three life science…
Descriptors: Science Tests, Gender Bias, College Freshmen, Foreign Countries
Jancarík, Antonín; Kostelecká, Yvona – Electronic Journal of e-Learning, 2015
Electronic testing has become a regular part of online courses. Most learning management systems offer a wide range of tools that can be used in electronic tests. With respect to time demands, the most efficient tools are those that allow automatic assessment. The presented paper focuses on one of these tools: matching questions in which one…
Descriptors: Online Courses, Computer Assisted Testing, Test Items, Scoring Formulas
Hutchinson, T. P. – 1984
One means of learning about the processes operating in a multiple choice test is to include some test items, called nonsense items, which have no correct answer. This paper compares two versions of a mathematical model of test performance to interpret test data that includes both genuine and nonsense items. One formula is based on the usual…
Descriptors: Foreign Countries, Guessing (Tests), Mathematical Models, Multiple Choice Tests