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- (ii) Now is not quite correct because if we determine the
theoretical parameters to minimize then implicitly
are also random variables that are functions of .
- It is not too hard to show that in this case, one should just
replace N by N-n (number of degrees of freedom) in .
- In any case, is very important because it allows an easy
criterion for the goodness of fit.
- Thus, if value of is many (say >2) standard deviations
away from its mean, then the theoretical form is in doubt.
- The usual maximum likelihood method does not have this
advantage:
- Remember, L was unnormalized and so value
had no significance for the goodness of fit. This is quite a difficult
problem.
Geoffrey Fox, Northeast Parallel Architectures Center at Syracuse University, gcf@npac.syr.edu