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Is there a function, a package, in R that allows to look for the best (or one of the best) variable transformation in order to make model's residuals as normal as possible?

For example:

frml = formula(some_tranformation(A) ~ B+I(B^2)+B:C+C)
model = aov(formula, data=data)

Is there a function in R, that tells what is the function some_transformation() that optimizes the normality of the residuals?

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Why not taking one of the many normality test and comparing each statistic by model ? –  statquant Aug 27 '13 at 11:51
@statquant because that's a terrible idea? –  hadley Aug 27 '13 at 12:57
@hadley , please tell me more about this, I am sure I will learn a lot or more likely laught a lot –  statquant Aug 27 '13 at 13:47
@statquant basically, normality tests are sensitive to different departures from normality than the other test. i.e. moderate kurtosis or mild skewness has little impact on a t-test, but a normality test will reject the null. It's a pretty commonly discussed topic. –  hadley Aug 27 '13 at 13:54
@hadley, of course but this is true for anything, though if I give you a transformation that makes the residuals say lognormal and another approx normal and you use a Kolmogorov Smirnov test hopefully null hyp is much more likely to be accepted on one than on the other... –  statquant Aug 27 '13 at 14:03

2 Answers 2

up vote 1 down vote accepted

You mean like the Box-Cox transformation?

m0 <- lm(cycles ~ len + amp + load, Wool)
plot(m0, which=2)

enter image description here

# Box Cox Method, univariate
summary(p1 <- powerTransform(m0))
# bcPower Transformation to Normality 
#    Est.Power Std.Err. Wald Lower Bound Wald Upper Bound
# Y1   -0.0592   0.0611          -0.1789           0.0606
# Likelihood ratio tests about transformation parameters
#                              LRT df      pval
# LR test, lambda = (0)  0.9213384  1 0.3371238
# LR test, lambda = (1) 84.0756559  1 0.0000000

# fit linear model with transformed response:
coef(p1, round=TRUE)
summary(m1 <- lm(bcPower(cycles, p1$roundlam) ~ len + amp + load, Wool))
plot(m1, which=2)

enter image description here

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also MASS::boxcox() –  Ben Bolker Aug 27 '13 at 13:40
Thanks a lot Roland, thats exactly what I needed. –  Remi.b Aug 27 '13 at 13:41

Unfortunately this is not a solved problem in statistics. What user @statquant has suggested is pretty much the best you can do, however it is not without its own pitfalls.

One important thing to note is that tests for normality, like shapiro.test are very sensitive to changes once you get reasonable sample sizes (i.e. in the hundreds), so you should not blindly rely on them.

Myself, i've thrown the problem in the too hard basket. If the data doesn't look at least normally distributed, then I would try to find a non-parametric version of the statistics you want to run on the data.

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