# Count and label observations per participant using loop

I have repeated-measures data.

I need to create a loop that will incrementally count each observation, within a participant, and label it.

I am new to writing loops. My logic was to say, for each item in the list of unique ids, count each row in that, and apply some function to that row.

Could someone point our what I am doing wrong?

``````data\$Ob <- 0

for (i in unique(data\$id)) {
count <- 1
for (u in data[data\$id == i,]) {
data[data\$id ==u,]\$Ob <- count
count <- count + 1
print(count)
}
}
``````

Thanks! Justin

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Could you please provide a reproducible example? – Luciano Selzer Aug 22 '12 at 13:55

``````# Generate some dummy data
data <- data.frame(Ob=0, id=sample(4,20,TRUE))

# Go through every id value
for(i in unique(data\$id)){
# Label observations
data\$Ob[data\$id == i] = 1:sum(data\$id == i)
}
``````

Be aware though that `for` loops are notoriously slow in R. In this simple case they work fine, but should you have millions and millions of rows in your data frame you'd better do something purely vectorized.

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Great! Thanks. I feel stupid, simple solution. – user1033745 Aug 22 '12 at 14:16
+1 for an inventive solution. I had to look at @Blacklin's solution to understand the question though... – Paul Hiemstra Aug 22 '12 at 14:31

You can also use `ave`:

``````set.seed(1)
data <- data.frame(id = sample(4, 10, TRUE))
data\$Ob = ave(data\$id, data\$id, FUN=seq_along)
data
id Ob
1   2  1
2   2  2
3   3  1
4   4  1
5   1  1
6   4  2
7   4  3
8   3  2
9   3  3
10  1  2
``````
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But you don't need a loop...

``````data <- data.frame (id = sample (4, 10, TRUE))

##    id
## 1   3
## 2   4
## 3   1
## 4   3
## 5   3
## 6   4
## 7   2
## 8   1
## 9   1
## 10  4

data\$Ob  [order (data\$id)] <- sequence (table (data\$id))

##    id Ob
## 1   3  1
## 2   4  1
## 3   1  1
## 4   3  2
## 5   3  3
## 6   4  2
## 7   2  1
## 8   1  2
## 9   1  3
## 10  4  3
``````

(works also with character or factor IDs)

(isn't R just cool!?)

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