The reliability of parametric methods in the case of rating scales: a
simulation study
Abstract
A recurring question is whether rating scales should be considered
metrically scaled or merely ordinally scaled. This has direct
implications for the permissible statistical procedures for significance
testing. Based on the results of a simulation study, it is shown that
the use of parametric procedures for rating scales has distinct
advantages over the non-parametric alternatives. It is also shown that
the parametric procedures are robust to violations of the assumption of
normality, which only result in a modest loss of power compared with
continuous variables. This loss should be taken into account when
calculating the optimal sample size. The results suggest that sample
sizes about 25% larger should be chosen for discrete rating scales than
for continuous variables.