Title of article :
Ordinal ridge regression with categorical predictors
Author/Authors :
Faisal M. Zahid&Shahla Ramzan، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2012
Abstract :
In multi-category response models, categories are often ordered. In the case of ordinal response models,
the usual likelihood approach becomes unstable with ill-conditioned predictor space or when the number
of parameters to be estimated is large relative to the sample size. The likelihood estimates do not exist when
the number of observations is less than the number of parameters. The same problem arises if constraint on
the order of intercept values is not met during the iterative procedure. Proportional odds models (POMs) are
most commonly used for ordinal responses. In this paper, penalized likelihood with quadratic penalty is used
to address these issues with a special focus on POMs. To avoid large differences between two parameter
values corresponding to the consecutive categories of an ordinal predictor, the differences between the
parameters of two adjacent categories should be penalized. The considered penalized-likelihood function
penalizes the parameter estimates or differences between the parameter estimates according to the type of
predictors. Mean-squared error for parameter estimates, deviance of fitted probabilities and prediction error
for ridge regression are compared with usual likelihood estimates in a simulation study and an application.
Keywords :
partial proportionalodds model , Penalization , Proportional odds model , likelihood estimation , logistic regression , ridge regression , non-proportional odds model
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS