The Metric Quality of Ordered Categorical Data
- 1 August 1989
- journal article
- Published by Institute for Operations Research and the Management Sciences (INFORMS) in Marketing Science
- Vol. 8 (3) , 205-230
- https://doi.org/10.1287/mksc.8.3.205
Abstract
We quantify the information loss incurred by categorizing an unobserved continuous variable () into an ordered categorical scale (). The continuous variable is conceptualized as true score (Ï„) (which varies across individuals) plus random error ((epsilon)), with both components assumed to be normally distributed. The index of metric quality is operationalized as 2 (, Ï„)/ 2(, Ï„), where 2 , the squared correlation coefficient, is a descriptive measure of the power of or to predict Ï„. The index is useful in defining limits on explanatory power (population 2 ) in multiple regression models in which an ordered categorical variable is regressed against a set of predictors. The index can also be used to correct correlations for the effects of ordered categorical measurement. The index of metric quality is extended to the case when several ordered categorical scales are averaged as in the multi-item measurement of a construct. We prove theoretically that as long as the error variance is “large,” the index of metric quality for the average of ordered categorical scales goes to 1 as the number of scales becomes “large.” The index for averaged data is useful in answering questions such as whether the measurement of a construct by averaging three 5-point scales is better or worse than the measurement obtained by averaging five 3-point scales. The results indicate that the loss of information by marketing researchers' ad hoc use of as opposed to the more refined is small (marketing research, rating scales, ordinal scales, polychoric correlation coefficientKeywords
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