The goal of CRTConjoint is to use the conditional randomization test
(CRT) to test for various hypothesis in conjoint experiments. In
particular, CRT_pval
aims to test whether a factor matters
in any way. For example, does education matter in immigration
preferences given other attributes of the candidate.
You can install CRTConjoint from GitHub with:
# install.packages("devtools")
::install_github("daewoongham97/CRTConjoint") devtools
or directly from CRAN with:
install.packages("CRTConjoint")
This is a basic example which shows you how to test whether education matters for immigration preferences.
library(CRTConjoint)
# Immigration data
data("immigrationdata")
= formula("Y ~ FeatEd + FeatGender + FeatCountry + FeatReason + FeatJob +
form FeatExp + FeatPlans + FeatTrips + FeatLang + ppage + ppeducat + ppethm + ppgender")
= colnames(immigrationdata)[1:9]
left = colnames(immigrationdata)[10:18]
right
## Not run:
# Testing whether edcuation matters for immigration preferences
= CRT_pval(formula = form, data = immigrationdata, X = "FeatEd",
education_test left = left, right = right, non_factor = "ppage", B = 100, analysis = 2)
$p_val education_test