If condition statement in R having length greater than one

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')

}
``````
• 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, 2015 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, 2015 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, 2015 at 18:23