4.2 Article

A hybrid approach for the analysis of complex categorical data structures: assessment of latent distance learning perception in higher education

Journal

COMPUTATIONAL STATISTICS
Volume -, Issue -, Pages -

Publisher

SPRINGER HEIDELBERG
DOI: 10.1007/s00180-022-01272-x

Keywords

Distance learning; Location-scale model; Joint data reduction; Recursive partitioning for ordinal data

Funding

  1. Universita degli Studi di Napoli Federico II within the CRUI-CARE Agreement

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This article introduces a method for dealing with ordinal response data, which tackles the problem by synthesizing multiple item responses into a meta-item and modeling the meta-item using regression approaches. Variable selection is performed automatically using a recursive partitioning method based on trees.
A long tradition of analysing ordinal response data deals with parametric models, which started with the seminal approach of cumulative models. When data are collected by means of Likert scale survey questions in which several scored items measure one or more latent traits, one of the sore topics is how to deal with the ordered categories. A stacked ensemble (or hybrid) model is introduced in the proposal to tackle the limitations of summing up the items. In particular, multiple items responses are synthesised into a single meta-item, defined via a joint data reduction approach; the meta-item is then modelled according to regression approaches for ordered polytomous variables accounting for potential scaling effects. Finally, a recursive partitioning method yielding trees provides automatic variable selection. The performance of the method is evaluated empirically by using a survey on Distance Learning perception.

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