| Affairs {AER} | R Documentation |
Fair's Extramarital Affairs Data
Description
Infidelity data, known as Fair's Affairs. Cross-section data from a survey conducted by Psychology Today in 1969.
Usage
data("Affairs")
Format
A data frame containing 601 observations on 9 variables.
- affairs
numeric. How often engaged in extramarital sexual intercourse during the past year?
0= none,1= once,2= twice,3= 3 times,7= 4–10 times,12= monthly,12= weekly,12= daily.- gender
factor indicating gender.
- age
numeric variable coding age in years:
17.5= under 20,22= 20–24,27= 25–29,32= 30–34,37= 35–39,42= 40–44,47= 45–49,52= 50–54,57= 55 or over.- yearsmarried
numeric variable coding number of years married:
0.125= 3 months or less,0.417= 4–6 months,0.75= 6 months–1 year,1.5= 1–2 years,4= 3–5 years,7= 6–8 years,10= 9–11 years,15= 12 or more years.- children
factor. Are there children in the marriage?
- religiousness
numeric variable coding religiousness:
1= anti,2= not at all,3= slightly,4= somewhat,5= very.- education
numeric variable coding level of education:
9= grade school,12= high school graduate,14= some college,16= college graduate,17= some graduate work,18= master's degree,20= Ph.D., M.D., or other advanced degree.- occupation
numeric variable coding occupation according to Hollingshead classification (reverse numbering).
- rating
numeric variable coding self rating of marriage:
1= very unhappy,2= somewhat unhappy,3= average,4= happier than average,5= very happy.
Source
Online complements to Greene (2003). Table F22.2.
https://pages.stern.nyu.edu/~wgreene/Text/tables/tablelist5.htm
References
Greene, W.H. (2003). Econometric Analysis, 5th edition. Upper Saddle River, NJ: Prentice Hall.
Fair, R.C. (1978). A Theory of Extramarital Affairs. Journal of Political Economy, 86, 45–61.
See Also
Examples
data("Affairs")
## Greene (2003)
## Tab. 22.3 and 22.4
fm_ols <- lm(affairs ~ age + yearsmarried + religiousness + occupation + rating,
data = Affairs)
fm_probit <- glm(I(affairs > 0) ~ age + yearsmarried + religiousness + occupation + rating,
data = Affairs, family = binomial(link = "probit"))
fm_tobit <- tobit(affairs ~ age + yearsmarried + religiousness + occupation + rating,
data = Affairs)
fm_tobit2 <- tobit(affairs ~ age + yearsmarried + religiousness + occupation + rating,
right = 4, data = Affairs)
fm_pois <- glm(affairs ~ age + yearsmarried + religiousness + occupation + rating,
data = Affairs, family = poisson)
library("MASS")
fm_nb <- glm.nb(affairs ~ age + yearsmarried + religiousness + occupation + rating,
data = Affairs)
## Tab. 22.6
library("pscl")
fm_zip <- zeroinfl(affairs ~ age + yearsmarried + religiousness + occupation + rating | age +
yearsmarried + religiousness + occupation + rating, data = Affairs)