10.6084/m9.figshare.9958484.v1
Daniel Fernández
Daniel
Fernández
Ivy Liu
Ivy
Liu
Roy Costilla
Roy
Costilla
Peter Yongqi Gu
Peter Yongqi
Gu
Assigning scores for ordered categorical responses
Taylor & Francis Group
2019
Global odds ratio
linear-by-linear association model
median measure
ordered stereotype model
uneven spacing
2019-10-09 07:40:59
Journal contribution
https://tandf.figshare.com/articles/journal_contribution/Assigning_scores_for_ordered_categorical_responses/9958484
<p>Deciding on the best statistical method to apply when the response variable is ordinal is essential because the way the categories are ordered in the data is relevant as it could change the results of the analysis. Although the models for continuous variables have similarities to those for ordinal variables, this paper presents the advantages of the use of the ordering information on the outcomes with methods developed for modeling ordinal data such as the ordered stereotype model. The novelty of this article lies in showing the dangers of assigning equally spaced scores to ordered response categories in statistical analysis, which are illustrated with a simulation study and a case study. We propose a new way to use the score parameters, which incorporates the fitted spacing dictated by the data. Additionally, this article uses score parameter estimates in the ordered stereotype model to propose a new measure to calculate continuous medians in the raw data: the <i>adjusted c-median</i>. It benefits the general audience who can easily understand the median as a summary statistic. Supplementary materials for this article are available online.</p>