Mize19GSS {catregs}R Documentation

General Social Survey Data analzed in Mize (2019)

Description

Mize (2019) illustrates how to establish nonlinear moderation in the context of regression models. He illustrates using General Social Survey (GSS) data and provides Stata code to replicate the results. Catregs functions can replicate these results in R.

Usage

data("Mize19GSS")

Format

A data frame with 19337 observations on the following 42 variables.

nosameB

a numeric vector

sameokB

a numeric vector

polviews

a character vector

age

a numeric vector

age10

a numeric vector

year

a numeric vector

id

a numeric vector

degree

a numeric vector

race

a numeric vector

partyid

a character vector

natspac

a character vector

natenvir

a character vector

natheal

a character vector

natcity

a character vector

natcrime

a character vector

natdrug

a character vector

nateduc

a character vector

natrace

a character vector

natarms

a character vector

nataid

a character vector

natfare

a character vector

health

a character vector

helpnotB

a character vector

conserv

a character vector

polviews3

a character vector

employed

a numeric vector

male

a numeric vector

woman

a numeric vector

white

a numeric vector

college

a numeric vector

married

a numeric vector

parent

a character vector

edyrs

a numeric vector

income

a numeric vector

hrswork

a character vector

parttime

a character vector

wages

a numeric vector

conviewSS

a numeric vector

year2

a numeric vector

yearcat

a numeric vector

year1976

a numeric vector

year1976.2

a numeric vector

Source

Mize, Trenton D. 2019. "Best Practices for Estimating, Interpreting, and Presenting Nonlinear Interaction Effects" Sociological Science 6: 81-117.

Examples

data(Mize19GSS)
head(Mize19GSS)

[Package catregs version 0.2.1 Index]