Power logit regression for modeling bounded data

02/03/2022
by   Francisco Felipe Queiroz, et al.
0

The main purpose of this paper is to introduce a new class of regression models for bounded continuous data, commonly encountered in applied research. The models, named the power logit regression models, assume that the response variable follows a distribution in a wide, flexible class of distributions with three parameters, namely the median, a dispersion parameter and a skewness parameter. The paper offers a comprehensive set of tools for likelihood inference and diagnostic analysis, and introduces the new R package PLreg. Applications with real and simulated data show the merits of the proposed models, the statistical tools, and the computational package.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/20/2021

Quantile Regression for positive data using a general class of distributions

This paper presents a general class of quantile regression models for po...
research
10/11/2021

Spatial Censored Regression Models in R: The CensSpatial package

CensSpatial is an R package for analyzing spatial censored data through ...
research
11/24/2022

Estimating Conditional Distributions with Neural Networks using R package deeptrafo

Contemporary empirical applications frequently require flexible regressi...
research
09/20/2020

Skewed probit regression – Identifiability, contraction and reformulation

Skewed probit regression is but one example of a statistical model that ...
research
06/23/2018

Assumption Lean Regression

It is well known that models used in conventional regression analysis ar...
research
12/11/2019

Parametric mode regression for bounded data

We propose new parametric frameworks of regression analysis with the con...
research
04/23/2021

Regression Modeling for Recurrent Events Using R Package reReg

Recurrent event analyses have found a wide range of applications in biom...

Please sign up or login with your details

Forgot password? Click here to reset