# If-Then Loop in R not Recognizing Conditional Statement

I have a data frame that looks something like the following:

``````X Y
1 3
1 7
1 9
2 12
2 4
2 8
3 11
3 3
3 5
``````

I'd like to create a new variable Z that = 0.25 if X = 1, 0.75 if X = 2 and 0.95 if X = 3.

I've tried the following code, which creates a variable Z and then loops over X, checking to see if X is a certain value, and then sets Z to the corresponding correct value. For example:

``````data\$Z <- 0
for (i in 1:length(data\$X)){
if (data\$X[i]==1) {data\$Z <- 0.25)
if (data\$X[i]==2) {data\$Z <- 0.50)
if (data\$X[i]==2) {data\$Z <- 0.95)
}
``````

The problem is that for some reason the conditional trigger isn't getting tripped in this code. If I just run it with the first if statement, all of the Z's are set to 0.25. With just the first two, they're all 0.50, etc.

Any clue as to what's happening?

-

In this simple example, the easiest way would be to use subsetting:

``````data\$Z <- 0.25
data\$Z[data\$X==2] <- 0.50
data\$Z[data\$X==3] <- 0.95
``````

No need for any loops or if/else statements.

-
+1 simple and good! maybe you can do better if you use `within`... –  agstudy Feb 20 at 9:37
I don't see how this would be "better". It saves a few characters in the code, ... –  Roland Feb 20 at 9:40
yes I mean prettier. The code is more readable, since you do modification within data , so it looks natural to use it. –  agstudy Feb 20 at 9:43

You need to set Z to the value you want at the same indexes where x meets those conditions, so:

``````data\$Z <- 0
for (i in 1:length(data\$X)){
if (data\$X[i]==1) {data\$Z[i] <- 0.25)
if (data\$X[i]==2) {data\$Z[i] <- 0.50)
if (data\$X[i]==3) {data\$Z[i] <- 0.95)
}
``````
-
Who has two thumbs and feels dumb? This guy. –  EpiGrad Feb 20 at 9:35
@EpiGrad This is the least idiomatic answer. Learn to use vectorized functions instead of `for` loops. Your code will run much faster that way. –  Roland Feb 20 at 9:42
Yeah, I don't fully understand the R community's general hatred for `for` loops, but I do tend to think that things like `ifelse` are better for these cases, I was mostly just correcting the specific flaw in OP's original code. –  Marius Feb 20 at 9:45
There is no general hatred, but this loop is extremely inefficient. But I see your point of correcting the specific flaw and that's why I didn't downvote. –  Roland Feb 20 at 9:47
@Roland In this case, because of the specific problem I'm dealing with, the speed gained by vectorization is not work the time it will take laying out something like ifelse appropriately. Here is one place where I'm not willing to sacrifice clarity for speed measured in tiny units. –  EpiGrad Feb 20 at 9:48

Use `ifelse` here beacause it is vectorized:

``````transform(dat, Z=ifelse(X==1,0.25,ifelse(X==2,0.75,0.95)))
X  Y    Z
1 1  3 0.25
2 1  7 0.25
3 1  9 0.25
4 2 12 0.75
5 2  4 0.75
6 2  8 0.75
7 3 11 0.95
8 3  3 0.95
9 3  5 0.95
``````

PS: here I assume that X take only 3 values.

EDIT

I like using sql case for such manipulations. You keep clear the business logic and it is fast as a vectorize version( intuitions)

``````library(sqldf)
dat\$newX <- sqldf('SELECT CASE X
WHEN 1  THEN 0.25
WHEN 2 THEN 0.5
ELSE 0.95
END AS newX
FROM dat ')
``````
-

It works with just one `ifelse` command:

``````transform(dat, Z = ifelse(X == 3, 0.95, 0.25 + 0.5 * (X - 1)))

X  Y    Z
1 1  3 0.25
2 1  7 0.25
3 1  9 0.25
4 2 12 0.75
5 2  4 0.75
6 2  8 0.75
7 3 11 0.95
8 3  3 0.95
9 3  5 0.95
``````

It even works without any `ifelse` (thanks to mathematics):

``````transform(dat, Z = 0.25 + round(0.50 * (X - 1) ^ .48, 2))

X  Y    Z
1 1  3 0.25
2 1  7 0.25
3 1  9 0.25
4 2 12 0.75
5 2  4 0.75
6 2  8 0.75
7 3 11 0.95
8 3  3 0.95
9 3  5 0.95
``````
-
+1! I like the X-1 trick ! even we loose the logic (we hide the business rule)! –  agstudy Feb 20 at 9:46
nice trick, but too specific. –  Arun Feb 20 at 10:30

All these answers so far assume that you've only 3 values (and rightly so, there is no reason to assume otherwise).

However, assuming that you might have more than 3 values, you can use `merge` in that case as so:

``````# assuming this is your data (dummy)
set.seed(45)
df <- data.frame(x=rep(1:5, each=5), y=sample(25))
``````

Here, you've five unique values for `x`. You can create a `data.frame` with the values you want to generate an additional column for each value of X as:

``````# here for each unique x, there is a value (just for example, randomly generated)
# equivalent to 0.25, 0.5 and 0.95 in your case
key <- data.frame(x=1:5, val=runif(5))
``````

Now, you can use `merge` as:

``````merge(df, key, by="x", all=T)
``````
-
I like this one! how I forget about merge :) +1 but even it hides the logic! –  agstudy Feb 20 at 16:37