Rank regression for analyzing ordinal qualitative data for treatment comparison


Autoria(s): Fu, L. Y.; Wang, Y-G.; Liu, C. J.
Data(s)

01/11/2012

Resumo

Ordinal qualitative data are often collected for phenotypical measurements in plant pathology and other biological sciences. Statistical methods, such as t tests or analysis of variance, are usually used to analyze ordinal data when comparing two groups or multiple groups. However, the underlying assumptions such as normality and homogeneous variances are often violated for qualitative data. To this end, we investigated an alternative methodology, rank regression, for analyzing the ordinal data. The rank-based methods are essentially based on pairwise comparisons and, therefore, can deal with qualitative data naturally. They require neither normality assumption nor data transformation. Apart from robustness against outliers and high efficiency, the rank regression can also incorporate covariate effects in the same way as the ordinary regression. By reanalyzing a data set from a wheat Fusarium crown rot study, we illustrated the use of the rank regression methodology and demonstrated that the rank regression models appear to be more appropriate and sensible for analyzing nonnormal data and data with outliers.

Identificador

http://eprints.qut.edu.au/90435/

Publicador

American Phytopathological Society

Relação

DOI:10.1094/phyto-05-11-0128

Fu, L. Y., Wang, Y-G., & Liu, C. J. (2012) Rank regression for analyzing ordinal qualitative data for treatment comparison. Phytopathology, 102(11), pp. 1064-1070.

Fonte

School of Mathematical Sciences; Science & Engineering Faculty

Palavras-Chave #linear rank regression model #repeated-measures designs #crown rot #factorial-designs #nonparametric #hypotheses #disease severity #dwarfing genes #wheat #statistics #resistance #height
Tipo

Journal Article