∈࣬ௗ is the nth basis function, x has the same dimension as ܠ,
࣬ௗ, ߴ and ݓ are the nth smoothing parameter and weighting
r, ࣡ሺ∙ሻ is the basis (normally Gaussian) function, and ݕො is the
tput or prediction for x. This transformation maps an original d-
nal data space (ܠ, ܠ∈࣬ௗ) to a K-dimensional kernel space. It is
that this K-dimensional kernel space has a linearity property, i.e.,
elationship between a dependent variable or phenotype variable
he features or the basis function (࣡ሺ∙ሻ).
tablish a RBFNN model, the likelihood function is commonly
an objective function for classification problems. Suppose the
function is used by RBFNN for the output transformation based
ollowing definition, where the sigmoid output is treated as a
ty,
ሺܠሻൌ
1
1 expሺെݕොሻ
(3.39)
kelihood function for N data points is then defined as below using
oulli function [Uspensky, 1937]
ൌෑܲሺܠ|ݕሻ
ே
ୀଵ
ൌෑሺܠሻ௬ሺ1 െሺܠሻሻଵି௬
ே
ୀଵ
(3.40)
regression analysis problem, an error function shown below is
y used,
ߝൌ1
ܰሺݕെݕොሻଶ
ே
ୀଵ
(3.41)
NN has a wide application in many areas including
l/medical pattern analysis. For instance, RBFNN has been used
ne how pear rootstocks tissue culture media is formed [Jamshidi,
19] and to remove tomography ring artifacts [Chao and Kim,