Liaw, Andy
2005-Mar-08 03:42 UTC
[R] coefficient of partial determination...partial r square [ redux]
If I'm not mistaken, partial R-squared is the R^2 of the quantities plotted in a partial residual plot, so you can base the computation on that. Prof. Fox's `car' package on CRAN has a function for creating those plots, but you need to figure out the way to extract the quantities being plotted. [In any case, the basic tools for doing such computations are all in R, and it shouldn't be hard at all to cook up such a thing, starting from the formula. Writing a function that works on any conceivable models that can be fitted with lm() would be a bit more challenging, but I doubt you need that.] HTH, Andy> From: Dr Carbon > > After the deafening silence from my last post (which likely caused > shudders of disgust in statistics departments on the six continents) > I'll reformulate: > > Is there a function that will return the coefficients of partial > determination for the independent variables in a lm (or glm). For y > x1 + x2....xn can I use R to extract the partial rsq for x1 to n? > > I am, and remain, with Admiration, etc. etc., at your Bidding, > DC > > ______________________________________________ > R-help at stat.math.ethz.ch mailing list > https://stat.ethz.ch/mailman/listinfo/r-help > PLEASE do read the posting guide! > http://www.R-project.org/posting-guide.html > > >
abunn
2005-Mar-08 20:54 UTC
[R] coefficient of partial determination...partial r square [ redux]
Dr. C:
I implemented this example of partial r square from Neter et al.'s big blue
book. It's easily extendable to a three variable model (or more). I might
write it to work with class lm or glm if there is interest.
HTH, Andy
Applied Linear Statistical Models by John Neter, Michael H Kutner, William
Wasserman, Christopher J. Nachtsheim
Section 7.4 in my copy page 274:
# body fat example from Neter et al.
bf.dat <- read.csv("body.fat.data.csv", header = T)
#R > bf.dat
# x1 x2 x3 y
#1 19.5 43.1 29.1 11.9
#2 24.7 49.8 28.2 22.8
#3 30.7 51.9 37.0 18.7
#4 29.8 54.3 31.1 20.1
#5 19.1 42.2 30.9 12.9
#6 25.6 53.9 23.7 21.7
#7 31.4 58.5 27.6 27.1
#8 27.9 52.1 30.6 25.4
#9 22.1 49.9 23.2 21.3
#10 25.5 53.5 24.8 19.3
#11 31.1 56.6 30.0 25.4
#12 30.4 56.7 28.3 27.2
#13 18.7 46.5 23.0 11.7
#14 19.7 44.2 28.6 17.8
#15 14.6 42.7 21.3 12.8
#16 29.5 54.4 30.1 23.9
#17 27.7 55.3 25.7 22.6
#18 30.2 58.6 24.6 25.4
#19 22.7 48.2 27.1 14.8
#20 25.2 51.0 27.5 21.1
#R >
# Not run:
#names(bf.dat) <- c('Triceps Skinfold Thickness', x2 = 'Thigh
Circumference', x3 = 'Midarm Circumference', y = 'Body Fat')
summary(bf.dat)
lm.x1 <- lm(y ~ x1, data = bf.dat)
lm.x2 <- lm(y ~ x2, data = bf.dat)
lm.x1.x2 <- lm(y ~ x1 + x2, data = bf.dat)
# SSR(x2|x1) = SSR(x1,x2) - SSR(x1)
ssr.x1.x2 <- sum(anova(lm.x1.x2)$"Sum Sq"[1:2])
ssr.x1 <- anova(lm.x1)$"Sum Sq"[1]
ssr.x2 <- anova(lm.x2)$"Sum Sq"[1]
ssr.x1.x2 - ssr.x1
# also
sse.x1 <- anova(lm.x1)$"Sum Sq"[2] # eq sum(lm.x1$resid^2)
sse.x2 <- anova(lm.x2)$"Sum Sq"[2] # eq sum(lm.x2$resid^2)
# The partial r2 of x1 while controlling for x2 is 0.031
# pr2_1.2 = SSR(x1|x2) / SSE(x2)
(ssr.x1.x2 - ssr.x2) / sse.x2
# The partial r2 of x2 while controlling for x1 is 0.232
# pr2_2.1 = SSR(x2|x1) / SSE(x1)
(ssr.x1.x2 - ssr.x1) / sse.x1