Sustainable assessment for large science classes : non-multiple choice, randomised assignments through a Learning Management System


Autoria(s): Schultz, Madeleine
Data(s)

28/06/2011

Resumo

This paper reports on the development of a tool that generates randomised, non-multiple choice assessment within the BlackBoard Learning Management System interface. An accepted weakness of multiple-choice assessment is that it cannot elicit learning outcomes from upper levels of Biggs’ SOLO taxonomy. However, written assessment items require extensive resources for marking, and are susceptible to copying as well as marking inconsistencies for large classes. This project developed an assessment tool which is valid, reliable and sustainable and that addresses the issues identified above. The tool provides each student with an assignment assessing the same learning outcomes, but containing different questions, with responses in the form of words or numbers. Practice questions are available, enabling students to obtain feedback on their approach before submitting their assignment. Thus, the tool incorporates automatic marking (essential for large classes), randomised tasks to each student (reducing copying), the capacity to give credit for working (feedback on the application of theory), and the capacity to target higher order learning outcomes by requiring students to derive their answers rather than choosing them. Results and feedback from students are presented, along with technical implementation details.

Formato

application/pdf

Identificador

http://eprints.qut.edu.au/42619/

Publicador

Queensland University of Technology

Relação

http://eprints.qut.edu.au/42619/1/SchultzJLDvol4no3.pdf

http://www.jld.qut.edu.au/publications/vol4no3/SchultzJLDvol4no3.pdf

Schultz, Madeleine (2011) Sustainable assessment for large science classes : non-multiple choice, randomised assignments through a Learning Management System. Journal of Learning Design, 4(3), pp. 50-62.

Direitos

Copyright © 2011 Madeleine Schultz

Fonte

Chemistry; Faculty of Science and Technology

Palavras-Chave #130103 Higher Education #online assessment #non-multiple choice #Assessment; large classes; learning management system; computerised testing; randomised testing #HERN
Tipo

Journal Article