Title of article :
Building up adjusted indicators of students’ evaluation of university courses using generalized item response models
Author/Authors :
Isabella Sulis&Vincenza Capursi، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2013
Abstract :
This article advances a proposal for building up adjusted composite indicators of the quality of university
courses from students’ assessments. The flexible framework of Generalized Item Response Models is
adopted here for controlling the sources of heterogeneity in the data structure that make evaluations across
courses not directly comparable. Specifically, it allows us to: jointly model students’ ratings to the set of
items which define the quality of university courses; explicitly consider the dimensionality of the items
composing the evaluation form; evaluate and remove the effect of potential confounding factors which may
affect students’ evaluation; model the intra-cluster variability at course level. The approach simultaneously
deals with: (i) multilevel data structure; (ii) multidimensional latent trait; (iii) personal explanatory latent
regression models. The paper pays attention to the potential of such a flexible approach in the analysis of
students evaluation of university courses in order to explore both how the quality of the different aspects
(teaching, management, etc.) is perceived by students and how to make meaningful comparisons across
them on the basis of adjusted indicators.
Keywords :
adjusted indicators , explanatory item response models , multidimensional latent traits , evaluation of university courses , mixedeffectsmodels
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS