Power Logit Regression for Modeling Bounded Data
Confidence Interval for the Skewness Parameter
Normal Probability Plots with Simulated Envelope of Residuals for PLre...
Procedure to Select the Extra Parameter for PLreg Objects
Influence Diagnostics for PLreg Objects
Methods for PLreg Objects
Power Logit Distributions
Diagnostic Plots for PLreg Objects
Power Logit Regression Models for Bounded Variables
Auxiliary for Controlling PL Fitting
Residuals Method for PLreg Objects
Sandwich Variance and Covariance Matrix for PLreg Objects
Power logit regression models for bounded continuous data, in which the density generator may be normal, Student-t, power exponential, slash, hyperbolic, sinh-normal, or type II logistic. Diagnostic tools associated with the fitted model, such as the residuals, local influence measures, leverage measures, and goodness-of-fit statistics, are implemented. The estimation process follows the maximum likelihood approach and, currently, the package supports two types of estimators: the usual maximum likelihood estimator and the penalized maximum likelihood estimator. More details about power logit regression models are described in Queiroz and Ferrari (2022) <arXiv:2202.01697>.