Análise Quantitativa da Concordância de Avaliadores de Recursos Educacionais Digitais dentro de Repositórios
Fecha
2023Resumen
Quality assessment inside learning object repositories is normally performed by the community of users that share
interest and rate the same resources. At the same time, this
strategy is largely disseminated in the most known repositories.
In addition, the final presentation of the overall quality of the
resources is normally restricted to the average rating given by the
community, thus, hiding the internal distribution of the ratings
and the characteristics of the users involved in the evaluation
process. The present paper analyzes to which extent different
raters tend to agree about the quality of the resources inside
the Merlot repository. For that, data were collected from the
repository and calculated the Intra-Class Correlation coefficient
for 102 pairs of evaluators, as well as the Spearman correlation
among the average ratings of a given resource by evaluators
coming from the same categories of disciplines. Results point
out a high concentration of poor agreement between raters
(75% to 85% of the pairs of raters tended to disagree), and no
correlation among the average ratings of the resources from the
different disciplines. Based on these findings, the authors suggest
improvements to the repository interface better presenting the
overall quality of the resources.