Abstract:
Multivariate analysis allows the analysis of variables of different
individuals, data measured together. Therefore, o complete description of the
interdependence relations that exist between groups of individuals and the
measured variable is obtained. The multivariate analysis method deals with
reducing the number of innitial variables by substitution with others resulting
from their combination. This can be represented in a graph by points in a two
dimensional or three dimensional space, while not loosing an excessive amount
of information. The PCA technique can be seen from more points of view. For
classical statistics, PCA is the determination of main axes of an elipsoid,
indicator of a normal multivariate distribution, these axes being estimated as
random samples. PCA is a graphic representation of these, having as optimal
character according to some algebraic and geometrical criteria that does not
presume the emission of a initial hypothesis of statistical nature on the data that
is to be analyzed. PCA allows the extraction of the maximum information, in a
simple and coherent form, as a data ensemble, by underlining the interrelations
between variables and individuals, either by similarity or opposition.