-1

I have written a code for golden section search in R. While evaluating the functions f1 and f2, I have only one element in f1 and f2. But while executing f1f2, the warning says:

if statement length is greater than one.

My code:

golden.section.search1 = function(f, lower.bound, upper.bound, tolerance)
{

   golden.ratio = (sqrt(5)-1)/2

   ### Use the golden ratio to set the initial test points
   x1 = upper.bound - golden.ratio*(upper.bound - lower.bound)
   x2 = lower.bound + golden.ratio*(upper.bound - lower.bound)


   ### Evaluate the function at the test points
   f1 = (1/8)*colSums(f(x1))
   print(f1)
   f2 = (1/8)*colSums(f(x2))
   print(f2)

   iteration = 0

   while (abs(upper.bound - lower.bound) > tolerance)
   {
      iteration = iteration + 1

      cat('', '\n')
      cat('Iteration #', iteration, '\n')

      if (f1 < f2)

      {
         cat('f2 > f1', '\n')
         ### Set the new lower bound
         lower.bound = x2
     cat('New Upper Bound =', upper.bound, '\n')
         cat('New Lower Bound =', lower.bound, '\n')
         ### Set the new upper test point
         ### Use the special result of the golden ratio
         x2 = x1
         f2 = f1

         ### Set the new lower test point
         x1 = lower.bound + golden.ratio*(upper.bound - lower.bound)
    cat('New lower Test Point = ', x2, '\n')
         f1 = f(x1)
      } 
      else
      {

          cat('f2 < f1', '\n')

         ### Set the new upper bound
         upper.bound = x1
         cat('New Upper Bound =', upper.bound, '\n')
         cat('New Lower Bound =', lower.bound, '\n')

         ### Set the new upper test point
         x1 = x2
      cat('New Upper Test Point = ', x1, '\n')

         f1 = f2
         ### Set the new upper test point
         x2 = upper.bound - golden.ratio*(upper.bound - lower.bound)
     cat('New Lower Test Point = ', x2, '\n')
         f2 = f(x2)
      }



  }
   ### Use the mid-point of the final interval as the estimate of the optimzer


 minimizer = (lower.bound + upper.bound)/2
   cat('Estimated Minimizer =', minimizer, '\n')


}
3
  • 2
    Please provide a reproducible example. What is the lower bound, upper bound, f, etc. It looks like the problem is f1 and f2 are returning more than one value.
    – KRC
    Jul 27 '15 at 5:14
  • lower bound=0.6 upper bound=0.999 tolerance= 0.001 and f is given by code below: f=function(minimizer) { actualvalues<-read.table("actualknown.csv",header=F) forecastedvalues<-read.table("forecastedknown.csv",header=F) error<-actualvalues-forecastedvalues meanabsoluteerror<-colMeans(abs(error)) return((abs((actualvalues-(forecastedvalues+minimizer*meanabsoluteerror))/actualvalues)) } Jul 27 '15 at 8:47
  • You should add this code directly inside the question. Your code is not yet reproducible. Give an example of what is in actualvalues and forecasted values
    – scoa
    Jul 27 '15 at 18:23
0

I found out the answer for my question. The function evaluation has to be done within the while loop and this error wont occur.

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.