alculated within-class scatter matrix is shown below,
ܵௐൌቀ3.30
െ0.55
െ0.55
6.60 ቁ
etween-class scatter matrix can be calculated using the following
where ࢛ was the mean vector of whole data set,
ܵൌܰሺ࢛െ࢛ሻሺ࢛െ࢛ሻ௧
ୀଵ
(3.13)
wing the above analysis, the estimated mapping vector was,
ܟൌሺ1.76
0.75ሻ
DA model for the data shown in Table 3.1 is thus shown below,
ݕොൌ1.76 ൈݔଵ0.75 ൈݔଶ
ourth column of Table 3.1 shows the values of ݕො using the above
del. Suppose the cutting point (threshold) was 20, the values of ݕො
verted to the prediction class variable Z, which is shown in the
mn of Table 3.1 and is also binary.
king decision using the Bayes rule for a LDA model
s can be made to classify data points into two classes by
g the LDA predictions (projections) against a threshold so that
predictions are converted to the predicted class labels which are
o be able to deliver a robust decision making system, the Bayes
been used in the LDA algorithm and many other discrimination
algorithms.
ose a data point belongs to either the class A or the class B. The
unctions (݂ and ݂) have been built up for both classes of the
tputs (ݕො and ݕොሻ. Using the Bayes rule for decision-making for