dc.description.abstract |
This study emphasised on methods for analysis of
categorical data having ordered categories for the multidimensional
case and the paper discusses some of the specialized models
which efficiently use the information on the ordering, unlike standard
methods for nominal categorical data, for multidimensional
variables In order to illustrate the methodology, three
dimensional data from a shopping survey in Oxford was used
The Standard nominal model fitted, represented the
associations between the life cycle level, car availability and
the agreement with the statement I find getting to grocery
shops very tiring, with 16 degrees of freedom The model
selected taking the ordinal nature of variables into account also
represented the same associations with 27 degrees of freedom,
thus with lesser number of parameters The standard log-linear
model requires describing interactions using a number of
parameters where as when ordinal nature of the variables is
considered, interactions can be represented by a few parameters
Based on the model which takes into consideration the
ordinal nature of the variables the odds ratios to illustrate the
association between the life cycle and agreement, disagreement,
tendency to disagree, in-between, and tendency to agree with
statement are 0 8, 0 4, 0 9 and 0 9 respectively The odds ratio
that describes the association of the car availability and the
agreement with the statement is 0 91
It is established that ordering of categories utilizes the
information reflected from data where as nominal models do
not use the information in the ordered categories Also the
suggested models have less parameters and are thus simpler
and more parsimonious |
en_US |