(a) (b)
The SVM model using the radial kernel function for the breast cancer data. (a)
istribution of the Gamma value variation. (b) The ROC curve for using the best
ue. The AUC was 0.996.
olynomial kernel is more suitable to the data in which variables
ete, especially binary. The difference between the radial basis
nd the polynomial kernel is the definition of the relationship
a data point and a support vector. Using the radial basis kernel,
onship between a data point and a support vector is defined by the
n distance, i.e., ‖ܠെܠ‖. However, the relationship between a
t and a support vector is defined as a dot product when using the
ial kernel, i.e., ܠ࢚ܠ. Figure 3.32(a) shows the ROC curve of a
odel using the polynomial kernel function constructed for the
ncer data, where both
and
ߙ
ߚ were optimised using a grid search
e degree parameter (d) was fixed at 3. Both
and
ߙ
ߚ were varied
1 to 0.1. The best ߙ value was 0.097 and the best ߚ value was
this breast cancer data using this SVM kernel function.
igmoid kernel function used in SVM is designed using two
rs shown below, where both ߙ and ߚ are two parameters,
ߖሺܠ, ܠሻൌ
1
1 expሺെߙܠ࢚ܠെߚሻ
(3.71)
gmoid kernel has a similar property as the polynomial kernel. To
igmoid kernel function for a SVM model for the breast cancer
nd ߚ were also optimised via a grid search process. Both ߙ and ߚ