Introduction |
Discrete Choice and Qualitative and Limited Dependent Variable Analysis |
The MDC procedure provides maximum likelihood (ML) or simulated maximum likelihood estimates of multinomial discrete choice models in which the choice set consists of unordered multiple alternatives.
The MDC procedure supports the following models and features:
conditional logit
nested logit
heteroscedastic extreme value
multinomial probit
mixed logit
pseudo-random or quasi-random numbers for simulated maximum likelihood estimation
bounds imposed on the parameter estimates
linear restrictions imposed on the parameter estimates
SAS data set containing predicted probabilities and linear predictor () values
decision tree and nested logit
model fit and goodness-of-fit measures including
likelihood ratio
Aldrich-Nelson
Cragg-Uhler 1
Cragg-Uhler 2
Estrella
Adjusted Estrella
McFadden’s LRI
Veall-Zimmermann
Akaike Information Criterion (AIC)
Schwarz Criterion or Bayesian Information Criterion (BIC)
The QLIM procedure analyzes univariate and multivariate limited dependent variable models where dependent variables take discrete values or dependent variables are observed only in a limited range of values. This procedure includes logit, probit, Tobit, and general simultaneous equations models. The QLIM procedure supports the following models:
linear regression model with heteroscedasticity
probit with heteroscedasticity
logit with heteroscedasticity
Tobit (censored and truncated) with heteroscedasticity
Box-Cox regression with heteroscedasticity
bivariate probit
bivariate Tobit
sample selection models
multivariate limited dependent models
The COUNTREG procedure provides regression models in which the dependent variable takes nonnegative integer count values. The COUNTREG procedure supports the following models:
Poisson regression
negative binomial regression with quadratic and linear variance functions
zero inflated Poisson (ZIP) model
zero inflated negative binomial (ZINB) model
fixed and random effect Poisson panel data models
fixed and random effect NB (negative binomial) panel data models
The PANEL procedure deals with panel data sets that consist of time series observations on each of several cross-sectional units.
The models and methods the PANEL procedure uses to analyze are as follows:
one-way and two-way models
fixed and random effects
autoregressive models
the Parks method
dynamic panel estimator
the Da Silva method for moving-average disturbances
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