im now performing Location Model using non-parametric smoothing to estimate the paramneters.....one of the smoothed paramater is the lamdha that i have to optimize...

so in that case, i decide to use "nlminb function" to achieve it.....

however, my programing give me the same "$par" value even though it was iterate 150 time and make 200 evaluation (by default)..... which is it choose "the start value as $par" (that is 0.000001 ...... i think, there must be something wrong with my written program....

my programing look like:- (note: w is the parameter that i want to optimize and LOO is stand for leave-one-out

BEGIN

```
Myfunc <- function(w, n1, n2, v1, v2, g)
{ ## open loop for main function
## DATA generation
# generate data from group 1 and 2
# for each group: discretise the continuous to binary
# newdata <- combine the groups 1 and 2
## MODEL construction
countError <- 0
n <- nrow(newdata)
for (k in 1:n)
{# open loop for leave-one-out
# construct model based on n-1 object using smoothing method
# classify omitted object
countError <- countError + countE
} # close loop for LOO process
Error <- countError / n # error rate counted from LOO procedure
return(Error) # The Average ERROR Rate from LOO procedure
} # close loop for Myfunc
library(stats)
nlminb(start=0.000001, Myfunc, lower=0.000001, upper=0.999999,
control=list(eval.max=100, iter.max=100))
```

END

could someone help me......

your concerns and guidances is highly appreciated and really100 needed......

Hashibah, Statistic PhD Student