[R] Structural Equation Models(SEM)

Jeremy Miles jeremy.miles at gmail.com
Wed Dec 2 19:22:15 CET 2009


In the world of SEM, GLS has pretty much fallen by the wayside - I
can't recall anything I've seen arguing for it's use in the past 10
years, and I also can't recall anyone using it over ML.   The
recommendations for non-normal distributions tend to be robust-ML, or
robust weighted least squares.  These are more computationally
intensive, and I *think* that John Fox (author of sem) has written
somewhere that it wouldn't be possible to implement them within R,
without using a lower level language - or rather that it might be
possible, but it would be really, really slow.

However, ML and GLS are pretty similar, if you dug around in the
source code, you could probably make the change (see,
http://www2.gsu.edu/~mkteer/discrep.html for example, for the
equations; in fact GLS is somewhat computationally simpler, as you
don't need to invert the implied covariance matrix at each iteration).
 However, the fact that it's not hard to make the change, and that no
one has made the change, is another argument that it's not a change
that needs to be made.

Jeremy



2009/12/2 Ralf Finne <Ralf.Finne at novia.fi>:
> Hi R-colleagues.
>
> I have been using the sem(sem) function.  It uses
> maximum likelyhood as optimizing. method.
> According to simulation study in Umeå Sweden
> (http://www.stat.umu.se/kursweb/vt07/stad04mom3/?download=UlfHolmberg.pdf
> Sorry it is in swedish, except the abstract)
> maximum likelihood is OK for large samples and normal distribution
> the SEM-problem should be optimized by GLS (Generalized Least Squares).
>
>
> So to the question:
>
> Is there any R-function that solves SEM with GLS?
>
>
> Ralf Finne
> Novia University of Applied Science
> Vasa  Finland
>
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-- 
Jeremy Miles
Psychology Research Methods Wiki: www.researchmethodsinpsychology.com




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