# Using non-sequential vector as input for a loop

I experience some problems with the loop function in R and couldn't find an answer on this question on this website. I would like to use a numeric vector as input for a loop in R.

For example:

``````ns <- c(10, 20, 40, 80, 160)

for (n in ns) {
ni[n] <- round(rnorm(1, mean = n, sd = 1))
}
``````

The result of this code is a vector with 155 times NA and five correct values in this vector. However, I would like to get rid of all those NAs and get a vector with only the five correct values. I know how to select the correct values from the vector with the 155 NA, but I prefer to obtain a proper vector directly after running the loop.

-

Remember that many functions in R are vectorized

``````> rnorm(length(ns), mean=ns)
[1]   9.905652  19.721717  40.462751  78.982971 160.770257
``````

(in your question, `ni[n]` creates a vector as long as the maximum of `n`, i.e., 160 elements).

It's interesting to see this evolve from an `sapply` solution offered by @VictorK.

``````sapply(ns, function(n) round(rnorm(1, mean = n, sd = 1)))
``````

factor out the `round` and drop the default argument `sd = 1`, so

``````round(sapply(ns, function(n) rnorm(1, mean = n)))
``````

then recognize that `rnorm` could replace the anonymous function `function(n) ...` if we name it's first argument in the `sapply` call. The first argument of `rnorm` is named `n`, so things are a little confusing; but we're forcing the elements of `ns` to match the second argument `mean`. For instance the first time through the sapply we evaluate `rnorm(ns[[1]], n=1)`. R matches arguments first by name, so n=1 matches the first argument of `rnorm`, and then by position amongst the remaining arguments, so the unnamed argument `ns[[1]]` matches the next available argument, `mean`)

``````round(sapply(ns, rnorm, n = 1))
``````

and then perhaps we see the fully vectorized solution

``````round(rnorm(n = length(ns), mean = ns))
``````
-

@Martin Morgan has shown you how to do this properly for the particular example you give. However, let's presume you want to use a function that isn't vectorised or you want to do something else along the lines of you actual example.

One way of doing that is to iterate over the indices of the elements of `ns`, not the elements themselves. Consider

``````ns <- c(10, 20, 40, 80, 160)
ni <- numeric(length = length(ns)) ## pre-allocate storage

for (n in seq_along(ns)) {
ni[n] <- round(rnorm(1, mean = ns[n], sd = 1))
}

> ni
[1]  12  21  40  80 160
``````

The key differences are

• the use of `seq_along()` to get R to generate a 1, 2, 3, ... sequence that is as long as `ns`, and
• using `n` as an index into `ns` to select the correct value rather than using the value of `n` itself.

For this example it is wasteful to call `rnorm()` `lenght(ns)` times, but there are occasions where doing something like this does make sense and indexing via the loop variable rather than using the loop variable itself is a handy approach.

-

There are several ways to create a vector on the fly. Here are a few options:

1) With a loop (but see for the next solution, as you should try to avoid loops in R):

``````ns <- c(10, 20, 40, 80, 160)

ni <- numeric(length(ns)) # pre-allocate the resulting vector
for (i in 1:length(ns)) {
ni[i] <- round(rnorm(1, mean = ns[i], sd = 1))
}
``````

2) Using apply family of functions:

``````sapply(ns, function(n) round(rnorm(1, mean = n, sd = 1)))
``````

The second one is an idiomatic R.

-
You point about avoiding loops in R but suggesting that the `sapply()` is better is not specific enough. Both of your examples form loops in R it just so happens that `sapply()` does a little more of the loop in compiled code compared to `for`, but where the body of the loop is the dominant amount of compute time, that `sapply()` uses compiled loop code is largely irrelevant and both solutions will have very similar execution times. The aversion to loops in R is often a hangover from S-Plus days or due to writing poor R code. –  Gavin Simpson Jan 29 '13 at 21:34
@GavinSimpson - thanks for the clarification. I agree that execution time may by similar in many cases. I think the main advantage of `sapply()` is that it promotes a better coding style. –  Victor K. Jan 29 '13 at 21:37
I actually think that an aversion to writing `for` loops often people to write convoluted `*apply` code/functions when a `for()` loop would be far more natural, easier to understand and less effort. –  Gavin Simpson Jan 29 '13 at 21:50