[R] scale or not to scale that is the question - prcomp
Petr PIKAL
petr.pikal at precheza.cz
Wed Aug 19 17:09:21 CEST 2009
Ok
Thank you for your time.
Best regards
Petr Pikal
Duncan Murdoch <murdoch at stats.uwo.ca> napsal dne 19.08.2009 16:29:07:
> On 8/19/2009 10:14 AM, Petr PIKAL wrote:
> > Duncan Murdoch <murdoch at stats.uwo.ca> napsal dne 19.08.2009 15:25:00:
> >
> >> On 19/08/2009 9:02 AM, Petr PIKAL wrote:
> >> > Thank you
> >> >
> >> > Duncan Murdoch <murdoch at stats.uwo.ca> napsal dne 19.08.2009
14:49:52:
> >> >
> >> >> On 19/08/2009 8:31 AM, Petr PIKAL wrote:
> >> >>> Dear all
> >> >>>
> >> >
> >> > <snip>
> >> >
> >> >> I would say the answer depends on the meaning of the variables. In
> > the
> >> >> unusual case that they are measured in dimensionless units, it
might
> >> >> make sense not to scale. But if you are using arbitrary units of
> >> >> measurement, do you want your answer to depend on them? For
example,
> > if
> >> >
> >> >> you change from Kg to mg, the numbers will become much larger, the
> >> >> variable will contribute much more variance, and it will become a
> > more
> >> >> important part of the largest principal component. Is that
sensible?
> >> >
> >> > Basically variables are in percentages (all between 0 and 6%)
except
> > dus
> >> > which is present or not present (for the purpose of prcomp
transformed
> > to
> >> > 0/1 by as.numeric:). The only variable which is not such is iep
which
> > is
> >> > basically in range 5-8. So ranges of all variables are quite
similar.
> >> >
> >> > What surprises me is that biplot without scaling I can interpret by
> > used
> >> > variables while biplot with scaling is totally different and those
two
> >
> >> > pictures does not match at all. This is what surprised me as I
would
> >> > expected just a small difference between results from those two
> > settings
> >> > as all numbers are quite comparable and does not differ much.
> >>
> >>
> >> If you look at the standard deviations in the two cases, I think you
can
> >
> >> see why this happens:
> >>
> >> Scaled:
> >>
> >> Standard deviations:
> >> [1] 1.3335175 1.2311551 1.0583667 0.7258295 0.2429397
> >>
> >> Not Scaled:
> >>
> >> Standard deviations:
> >> [1] 1.0030048 0.8400923 0.5679976 0.3845088 0.1531582
> >>
> >>
> >> The first two sds are close, so small changes to the data will affect
> >
> > I see. But I would expect that changes to data made by scaling would
not
> > change it in such a way that unscaled and scaled results are
completely
> > different.
> >
> >> their direction a lot. Your biplots look at the 2nd and 3rd
components.
> >
> > Yes because grouping in 2nd and 3rd component biplot can be easily
> > explained by values of some variables (without scaling).
> >
> > I must admit that I do not use prcomp much often and usually scaling
can
> > give me "explainable" result, especially if I use it to "variable
> > reduction". Therefore I am reluctant to use it in this case.
> >
> > when I try "more standard" way
> >
> >> fit<-lm(iep~sio2+al2o3+p2o5+as.numeric(dus), data=rglp)
> >> summary(fit)
> >
> > Call:
> > lm(formula = iep ~ sio2 + al2o3 + p2o5 + as.numeric(dus), data = rglp)
> >
> > Residuals:
> > Min 1Q Median 3Q Max
> > -0.41751 -0.15568 -0.03613 0.20124 0.43046
> >
> > Coefficients:
> > Estimate Std. Error t value Pr(>|t|)
> > (Intercept) 7.12085 0.62257 11.438 8.24e-08 ***
> > sio2 -0.67250 0.20953 -3.210 0.007498 **
> > al2o3 0.40534 0.08641 4.691 0.000522 ***
> > p2o5 -0.76909 0.11103 -6.927 1.59e-05 ***
> > as.numeric(dus) -0.64020 0.18101 -3.537 0.004094 **
> >
> > I get quite plausible result which can be interpreted without
problems.
> >
> > My data is a result of designed experiment (more or less :) and
therefore
> > all variables are significant. Is that the reason why scaling may bye
> > inappropriate in this case?
>
> No, I think it's just that the cloud of points is approximately
> spherical in the first 2 or 3 principal components, so the principal
> component directions are somewhat arbitrary. You just got lucky that
> the 2nd and 3rd components are interpretable: I wouldn't put too much
> faith in being able to repeat that if you went out and collected a new
> set of data using the same design.
>
> Duncan Murdoch
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