Generalized Linear Randomized Response Modeling using GLMMRR

06/18/2021
by   Jean-Paul Fox, et al.
0

Randomized response (RR) designs are used to collect response data about sensitive behaviors (e.g., criminal behavior, sexual desires). The modeling of RR data is more complex, since it requires a description of the RR process. For the class of generalized linear mixed models (GLMMs), the RR process can be represented by an adjusted link function, which relates the expected RR to the linear predictor, for most common RR designs. The package GLMMRR includes modified link functions for four different cumulative distributions (i.e., logistic, cumulative normal, gumbel, cauchy) for GLMs and GLMMs, where the package lme4 facilitates ML and REML estimation. The mixed modeling framework in GLMMRR can be used to jointly analyse data collected under different designs (e.g., dual questioning, multilevel, mixed mode, repeated measurements designs, multiple-group designs). The well-known features of the GLM and GLMM (package lme4) software are remained, while adding new model-fit tests, residual analyses, and plot functions to give support to a profound RR data analysis. Data of Höglinger and Jann (2018) and Höglinger, Jann, and Diekmann (2014) is used to illustrate the methodology and software.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/27/2021

Approximation Methods for Mixed Models with Probit Link Functions

We study approximation methods for a large class of mixed models with a ...
research
04/05/2023

CrossCarry: An R package for the analysis of data from a crossover design with GEE

Experimental crossover designs are widely used in medicine, agriculture,...
research
06/26/2020

A modified Armitage test for more than a linear trend on proportions

The Armitage test for linear trend in proportions can be modified using ...
research
06/04/2018

pammtools: Piece-wise exponential Additive Mixed Modeling tools

This article introduces the pammtools package, which facilitates data tr...
research
08/02/2022

Hypothesis tests for multiple responses regression models in R: The htmcglm Package

This article describes the R package htmcglm implemented for performing ...
research
01/07/2023

D-Optimal and Nearly D-Optimal Exact Designs for Binary Response on the Ball

In this paper the results of Radloff and Schwabe (2019a) will be extende...
research
12/10/2020

PoolTestR: An R package for estimating prevalence and regression modelling with pooled samples

Pooled testing (also known as group testing), where diagnostic tests are...

Please sign up or login with your details

Forgot password? Click here to reset