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I have a dataset that looks like this:

    temperature station.id  latitude    longtitude  sea.distance    altitude
1       18          S1           0.5        0.5              0.5        0
2       20.5        S1           0.5        0.5              0.5        0
3       18          S2           0.5        0.5              0.5        0
4       18.6        S2           0.5        0.5              0.5        0
5       21.5        S3           0.5        0.5              0.5        0
6       20.1        S3           3.5        2.5              1.5        200
7       18.3        S3           3.5        2.5              1.5        200
8       16.8        S4           3.5        2.5              1.5        200

Consider it to be tab-separated file which R reads by read.table and so on. I want to be able to automatically group values, according to the station.id column value.


For S1 a variable like S1temp <- c(18, 20.5) to be created containing as string the temperature values.

The idea is that the data will often change and that change has to automatically detected. That is why, the above example won't do.

I assume that an for loop would be needed. What the arguments should be?


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3 Answers 3

up vote 0 down vote accepted

One way using data.table (let's call your data.frame DF)

DT <- data.table(DF)
DT2 <- DT[,list("temps"=paste(temperature,collapse=", ")),by=station.id]

The result is a table of unique station.id's in the first column and a string of the temps in the second column.

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I asked for a string with all values by station.id, which is helpful and so i guess you answered having in mind that –  user1834437 Apr 3 '14 at 9:38
In what way is this not what you asked for? –  JeremyS Apr 3 '14 at 9:59
My comment says exactly that. Only my syntax is bad.. –  user1834437 Apr 3 '14 at 19:54

Here are two suggestions - there are probably more elegant solutions.

Method 1. Make a loop over the values of the station.id variable, and make a new data.frame with these data, creating new variables in the current environment. The disadvantage is that may create many, many variables.

for(y in unique(df$station.id)){
    assign(sprintf('%sdf',y),subset(df,station.id == y))

Method 2. Make a list, using lapply, with the values of all the data for a given station.id value under the corresponding index.

results <- lapply(unique(df$station.id),function(y) subset(df,station.id == y))
names(results) <- unique(df$station.id)
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your first solution creates a table containing all variables and values, but only for S4. How can duplicate the process for other station.id values? –  user1834437 Apr 3 '14 at 9:23
I am not sure I understand your comment. In my test case, the first solution creates a data.frame variable for each value of station.id (S1, S2, S3, S4 - named S1df, S2df, S3df, S4df, respectively). S1df is the subset of df that has station.id equal to S1. Then S1df$temperature gives the temperatures for data-points with station.id == 'S1' –  nullglob Apr 3 '14 at 10:15
i will have to look at it more tomorrow, i am probably doing something wrong.. does y value changes? –  user1834437 Apr 3 '14 at 20:11
Yes. In both solutions, y takes each of the values of the station.id variable, however each value is considered only once (by using unique()). –  nullglob Apr 4 '14 at 8:31

One of the easiest ways to do this, is with the plyr package:

station <- ddply(df, .(station.id), summarise, temps = paste(temperature,collapse=","))

This gives you the new dataframe station with station.id in the first column and a string of the temperatures in the second column.

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