# NA values in concatenated R vectors

Consider the following code

MyClass <- setRefClass("MyClass",

fields = list(body = "vector"),

methods = list(
initialize = function(length){
body <<- sample(-100:100, length) / 100
}
)
)

myFunction <- function(classA, classB){
cut <- sample(1:length(classA$body), 1) new.bodyA <- c(classA$body[1:cut], classB$body[cut+1:length(classB$body)])
new.bodyB <- c(classB$body[1:cut], classA$body[cut+1:length(classA$body)]) classA$body <- new.bodyA
classB$body <- new.bodyB return(list(classA, classB)) } a <- MyClass$new(10)
b <- MyClass$new(10) myFunction(a, b)  What I am trying to achieve is two new vectors that combine the elements of two given vectors based on a random element index. I am not sure what is happening, but when I run this the new vectors will contain NA values: [[1]] Reference class object of class "MyClass" Field "body": [1] 0.50 -0.67 0.69 -0.43 0.12 -0.82 0.76 0.72 -0.02 -0.31 NA NA NA NA NA NA NA [[2]] Reference class object of class "MyClass" Field "body": [1] 0.18 0.41 0.11 0.14 0.52 -0.67 -0.30 -0.85 -0.45 0.33 NA NA NA NA NA NA NA  I am not sure why this is happening - the function works correctly but I don't know how to avoid the NA values. Can someone explain why this is happening, and suggest a workaround ? Many thanks - ## 2 Answers I am pretty sure that the problem in your code is when you use cut+1:length(classB$body)


while you should be using:

(cut+1):length(classB\$body)


These are not the same thing because the : operator has higher precedence than the binary + (See ?Syntax for detail on operator precedence). See for yourself:

2+1:6
# [1] 3 4 5 6 7 8
2+(1:6)
# [1] 3 4 5 6 7 8
(2+1):6
# [1] 3 4 5 6

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Thanks flodel, this was the issue. I'm not sure why you're receiving the error though .. ? – Sherlock Aug 11 '12 at 18:11
I restarted R and now I don't see the error, I'll edit. – flodel Aug 11 '12 at 18:14
 a = c(1,2,3,4,5)
b = c(6,7,8,9,10)

concat_a_wrong = c(a[1:3],b[3+1:length(b)])
concat_a_correct  = c(a[1:3],b[(3+1):length(b)])

>>concat_a_wrong
1  2  3  9 10 NA NA NA
>>concat_a_correct
1  2  3  9 10


in the wrong case you add the cut to every item in range 1:length so actually you go out bounds (NA) in the b array

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