CRAN/E | hopit

hopit

Hierarchical Ordered Probit Models with Application to Reporting Heterogeneity

Installation

About

Self-reported health, happiness, attitudes, and other statuses or perceptions are often the subject of biases that may come from different sources. For example, the evaluation of an individual’s own health may depend on previous medical diagnoses, functional status, and symptoms and signs of illness; as on well as life-style behaviors, including contextual social, gender, age-specific, linguistic and other cultural factors (Jylha 2009 doi:10.1016/j.socscimed.2009.05.013; Oksuzyan et al. 2019 doi:10.1016/j.socscimed.2019.03.002). The hopit package offers versatile functions for analyzing different self-reported ordinal variables, and for helping to estimate their biases. Specifically, the package provides the function to fit a generalized ordered probit model that regresses original self-reported status measures on two sets of independent variables (King et al. 2004 doi:10.1017/S0003055403000881; Jurges 2007 doi:10.1002/hec.1134; Oksuzyan et al. 2019 doi:10.1016/j.socscimed.2019.03.002). The first set of variables (e.g., health variables) included in the regression are individual statuses and characteristics that are directly related to the self-reported variable. In the case of self-reported health, these could be chronic conditions, mobility level, difficulties with daily activities, performance on grip strength tests, anthropometric measures, and lifestyle behaviors. The second set of independent variables (threshold variables) is used to model cut-points between adjacent self-reported response categories as functions of individual characteristics, such as gender, age group, education, and country (Oksuzyan et al. 2019 doi:10.1016/j.socscimed.2019.03.002). The model helps to adjust for specific socio-demographic and cultural differences in how the continuous latent health is projected onto the ordinal self-rated measure. The fitted model can be used to calculate an individual predicted latent status variable, a latent index, and standardized latent coefficients; and makes it possible to reclassify a categorical status measure that has been adjusted for inter-individual differences in reporting behavior.

Citation hopit citation info

Key Metrics

Version 0.11.6
R ≥ 3.5.0
Published 2024-01-29 90 days ago
Needs compilation? yes
License GPL-3
CRAN checks hopit results

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Maintainer

Maintainer

Maciej J. Danko

Maciej.Danko@gmail.com

Authors

Maciej J. Danko

aut / cre

Material

README
NEWS
Reference manual
Package source

Vignettes

R packages: vignette

macOS

r-release

arm64

r-oldrel

arm64

r-release

x86_64

Windows

r-devel

x86_64

r-release

x86_64

r-oldrel

x86_64

Old Sources

hopit archive

Depends

R ≥ 3.5.0
survey ≥ 4.1-1

Imports

MASS
Rcpp
graphics
stats
grDevices
questionr
parallel
Rdpack ≥ 0.11.0

Suggests

testthat ≥ 3.0.0
R.rsp ≥ 0.43.0
usethis ≥ 1.5.0
knitr ≥ 1.20
rmarkdown ≥ 1.12
qpdf
roxygen2 ≥ 6.1.1

LinkingTo

Rcpp
RcppEigen