g
(
g
p
These predicted class labels are shown in the first two columns of
. In addition to these two LDAs, the third LDA is added on top
wo LDAs (namely, ߙ and ߚ). The third LDA examines whether
cted class labels of LDA ߙ are the same as the predicted class
LDA ߚ. If the predicted class label of LDA ߙ is the same as the
class label of LDA ߚ, the top level LDA outputs a predicted class
. Otherwise, the top level LDA outputs a predicted class label
terwards, four data points have been well-labeled or well-
. Table 3.7 shows this result. The process is shown in Figure
nd Table 3.7.
(a) (b)
An analysis of XOR problem using multiple LDAs leading to a MLP model.
R problem with two LDAs. (b) The connection of three LDA results in a MLP
Table 3.7. The analysis of three LDAs applied to the XOR problem.
LDA ߙ
LDA ߚ
LDA ߙ = ߚ
Output
a
0
1
No
0
b
1
0
No
0
c
1
1
Yes
1
d
1
1
Yes
1
he R packages for MLP
several R packages for constructing a MLP model. Typical ones
net, elmNN and brnn. These packages were developed based