my.lda=lda(class ~.,x)
above code, my.lda is a LDA object and is composed of eight
nts, namely $prior, $counts, $means, $scaling, $lev,
N, $call, $terms and $xlevels. Among them, $prior,
s, $means and $scaling are the main components for further
e 3.3 shows two data sets with two clusters but different
ons of data points from two clusters. Figure 3.3(a) shows a data
an even data distribution across two classes but Figure 3.3(b)
data set with an odd data distribution across two classes. Two
ad different centres, but had the same covariance matrix shown
ܵௐൌቀ4
2
2
4ቁ
(a) (b)
wo data sets for illustrating how LDA and the Bayes rule work for data sets with
d data point number. (a) Both classes (the triangles and the crosses) were
of 200 data points. (b) The triangle class was composed of 200 data points, but
ass was composed of 2,000 data points.
e 3.4 shows the densities of the LDA predictions (ݕො and ݕො) for
sets shown in Figure 3.3. Because two clusters had an even data
on across two classes (both have 200 data points) in the data set
n Figure 3.3(a), two a priori probabilities were identical, i.e.,
ൌߨ௦௦ൌ0.5. The two density functions of two classes