Using the following code, I am trying to perform leave-one-out cross-validation.

```
library(e1071)
library(plyr)
trainingdata<-read.table('data.txt', sep=",", header=TRUE)
f0 <- function(x) any(x!=1) & any(x!=0) & is.numeric(x)
trainingdata<-cbind(colwise(identity, f0)(trainingdata))
C <- 0
M <- 0
count <- nrow(trainingdata)
for(i in 1:count)
{
actual <- trainingdata[i,]$label
trainingtemp <- trainingdata[-c(i), ]
model <- svm(factor(label)~., data=trainingtemp, method="C-classification",
kernel="sigmoid", C=0.1, gamma=0.01, cross=10)
testdata <- trainingdata[i, ]
prediction <- predict(model, testdata)
prediction <- paste(prediction)
if(actual==prediction)
C <- C+1
else
M <- M+1
}
write.csv(data.frame(C,M))
```

The issue that I don't understand is that I always get the same value for C (correctly classified) and M (Incorrectly classified). The results are same in the following conditions:

1 - I have tried with different values for Cost and gamma (also tried best.svm() function)

2 - Tried different methods of classification + different kernels too.

3 - There are a total of around 50 features in the data set. Even, if any one feature is used while building the model i.e. (svm(label~x1...) or svm(label~x2...), the result has no impact.

Is there any problem with the code? Data is quite large to be posted here.