hold A in Figure 3.12(a) is the lowest threshold. Certainly, using
hold, a great proportion of misclassification happens to the left
e consequence is that almost all data points of the right class are
classified. This results in a perfect true positive rate approaching
%. However, the use of this threshold causes a huge
fication rate for the left class. Therefore, almost all data points of
lass have been misclassified as the right class. The consequence
emely high false positive rate approaching to 100% as well. This
he threshold A is approaching to the top-right corner in Figure
The threshold G represents another scenario. Because it is on the
of the horizontal axis shown in Figure 3.12(a), almost all data
the right class are misclassified. The consequence is an almost
positive rate. At the same time, all the data points of the left class
ctly classified. Therefore the false positive rate is also almost 0%.
hy the threshold G is located at the bottom-left corner shown in
12(b) and Figure 3.12(c). Connecting these seven points in this
nsional space finally results in an ROC curve shown in Figure
(a) (b) (c)
The formation of an ROC curve. (a) Two densities of two classes with seven
nts. (b) Seven pairs of two rates in a two-dimensional space. The horizontal axis
e false positive rate. The vertical axis employs the positive rate. (c) Connecting
s leads to an ROC curve.