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recommended. A more sophisticated problem is the extraction of non-trivial
factors. À statistical approach to determine the number of non-trivial
factors exists for a small number of procedures only and may lead to the
extraction of factors of trivial importance. À simple, but very relaible
method for quick analysis is the determination of the per cent of variance
extracted by a reduced number of factors. À cumulative per cent of 75 - 85
of variance is considered as efficient. Usually the extraction of factor
loadings is stopped, when the next factor to be extracted contributes a much
smaller percentage of variance than the preceding one. This point can easily
be recognized by plotting the eigenvalues of the principal component analysis
or the variance of the factors vs. the factor sequence number. The basic idea
behind this test is, that most of the variables measure a limited number of
factors well and a large number of (error) factors less well. This test fits
particularly to the requirements of the principal component analysis, where
the factors are extracted in the sequence of their substantivity. The inter-
pretation is becoming complicated, when several breaks occur in the factor
variance plot. If this break occurs toward factors of higher order, the drop
can be ignored, because extracting the same numbers of factors as there are
variables, is of no interest and of no use. The problem is more serious, if
(two) breaks occur in the first half of the number of factors. Here other
criteria have to be applied for the extraction of the factors. For the use,
when no obvious break exists, a solution can still be obtained by determining
the point where the best variance contribution no larger forms or straight
line. The exact number can, however, only be estimated. The correlation matrix
can still be significant, as random eigenvalues do not necessarily have signi-
ficant breaks.
5. Rotation of Coordinate Systems
As from the plots of the factor loadings in the coordinate system of the
factor pattern space can be observed, there is a clustering of factors re-
presenting items of uniform properties of the variables involved. The factor
loadings are very often difficult to interprete, as the solution obtained is
influenced by the special data properties. This discrepancy in the case of
multispectral data evaluation has its origin in