foodstamp {robustbase} | R Documentation |
Food Stamp Program Participation
Description
This data consists of 150 randomly selected persons from a survey with information on over 2000 elderly US citizens, where the response, indicates participation in the U.S. Food Stamp Program.
Usage
data(foodstamp, package="robustbase")
Format
A data frame with 150 observations on the following 4 variables.
participation
participation in U.S. Food Stamp Program; yes = 1, no = 0
tenancy
tenancy, indicating home ownership; yes = 1, no = 0
suppl.income
supplemental income, indicating whether some form of supplemental security income is received; yes = 1, no = 0
income
monthly income (in US dollars)
Source
Data description and first analysis: Stefanski et al.(1986) who indicate Rizek(1978) as original source of the larger study.
Electronic version from CRAN package catdata.
References
Rizek, R. L. (1978) The 1977-78 Nationwide Food Consumption Survey. Family Econ. Rev., Fall, 3–7.
Stefanski, L. A., Carroll, R. J. and Ruppert, D. (1986) Optimally bounded score functions for generalized linear models with applications to logistic regression. Biometrika 73, 413–424.
Künsch, H. R., Stefanski, L. A., Carroll, R. J. (1989) Conditionally unbiased bounded-influence estimation in general regression models, with applications to generalized linear models. J. American Statistical Association 84, 460–466.
Examples
data(foodstamp)
(T123 <- xtabs(~ participation+ tenancy+ suppl.income, data=foodstamp))
summary(T123) ## ==> the binary var's are clearly not independent
foodSt <- within(foodstamp, {
logInc <- log(1 + income)
rm(income)
})
m1 <- glm(participation ~ ., family=binomial, data=foodSt)
summary(m1)
rm1 <- glmrob(participation ~ ., family=binomial, data=foodSt)
summary(rm1)
## Now use robust weights.on.x :
rm2 <- glmrob(participation ~ ., family=binomial, data=foodSt,
weights.on.x = "robCov")
summary(rm2)## aha, now the weights are different:
which( weights(rm2, type="robust") < 0.5)