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- I note that in using this method, I got to look at values of
the
. It was not uncommon for
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- You can ask why one gets such large ratios.
- Intuitively, the eigenvectors of M with small eigenvalue
correspond to linear combinations of
that are badly
determined.
- So very small
's say that your theoretical formalism is
redundant or alternatively the data inadequate.
- For instance, in fitting a cross section
to
then often the coefficients of the higher order
Legendre functions are poorly determined, and
if you choose n to be ``too big,'' then small
eigenvalues will develop.
- In this case, one can cure
the problem by reducing the top index n but in general no such simple
solution exists.
Geoffrey Fox, Northeast Parallel Architectures Center at Syracuse University, gcf@npac.syr.edu