# Is my objective function to optimize svm parameters right?

I have this objective function to optimize SVM parameters using PSO.

``````rmse <- function(error)
{
sqrt(mean(error^2))
}

f <- function(V1, V2,V3)
{
V1 <- log10(B1)
V2 <- log10(B2)
V3 <- log10(B3)

svm.model <- svm(x=train, y=data$$y1,scale=F, type= "eps-regression",kernel="radial",cost = V1 ,epsilon= V2 ,gamma= V3) error<- data$$y1- svm.model\$fitted
return (rmse(error))
}
``````

and I am trying to optimize the cost, gamma and epsilon using PSOPTIM in R

``````B3<-  seq(1, 2,0.1)
B1<-  2^(2:9)
B2 <- seq(1,10, 0.1)

n <- 50
m.l <- 50
w <- 0.95
c1 <- 0.2
c2 <- 0.2
xmin <- c(-5.12, -5.12)
xmax <- c(5.12, 5.12)
vmax <- c(4, 4)
optimum <-psoptim(f, n=n, max.loop=m.l, w=w, c1=c1, c2=c2,xmin=xmin, xmax=xmax, vmax=vmax, seed=5, anim=FALSE)

``````

The output is not right, it is returning me fitness value for first value of cost, gamma and epsilon rather than providing me the optimal fitness value.

``````\$`sol`
x1        x2
[1,] -3.069804 -1.181932

\$val
[1] 0.03505127
``````

I want the output to be the optimized values of cost, gamma and epsilon. I know something is not right about the function. Any help would be greatly appreciated.

## migrated from stats.stackexchange.comApr 23 at 11:13

This question came from our site for people interested in statistics, machine learning, data analysis, data mining, and data visualization.