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I am trying to do something which seems simple but is proving a bit of a challenge so I hope someone can help!
I have a time series of observations of temperature:

Lines <-"1971-01-17 298.9197
1971-01-17 298.9197
1971-02-16 299.0429
1971-03-17 299.0753
1971-04-17 299.3250
1971-05-17 299.5606
1971-06-17 299.2380
2010-07-14 298.7876
2010-08-14 298.5529
2010-09-14 298.3642
2010-10-14 297.8739
2010-11-14 297.7455
2010-12-14 297.4790"

DF <- read.table(textConnection(Lines), col.names = c("Date", "Value"))

DF$Date <- as.Date(DF$Date)

mean.ts <- aggregate(DF["Value"], format(DF["Date"], "%m"), mean)

This produces:

> mean.ts
  Date    Value
1   01 1.251667
2   02 1.263333

This is just an example -- my data is for many years so I can calculate a full monthly average of the data.
What I then want to do is calculate the difference in for all of the January's (individually) with the mean January I have calculated above.

If I move away from using Date/Time class I could do this with some loops but I want to see if there is a "neat" way to do this in R? Any ideas?

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I cleaned up your code a bit, but can not get what you say that mean.ts is (ie values just over 1). –  James Jan 19 '12 at 16:23
    
A small tip. As of 2.14, read.table has a text argument. –  Roman Luštrik Jan 19 '12 at 16:33
    
You could have also used as.POSIXlt(DF[["Date"]])$mon although format is still easier IMO. –  BondedDust Jan 19 '12 at 16:42

2 Answers 2

You can just add the year as an aggregating variable. This is easier using the formula interface:

> aggregate(Value~format(Date,"%m")+format(Date,"%Y"),data=DF,mean)
   format(Date, "%m") format(Date, "%Y")    Value
1                  01               1971 298.9197
2                  02               1971 299.0429
3                  03               1971 299.0753
4                  04               1971 299.3250
5                  05               1971 299.5606
6                  06               1971 299.2380
7                  07               2010 298.7876
8                  08               2010 298.5529
9                  09               2010 298.3642
10                 10               2010 297.8739
11                 11               2010 297.7455
12                 12               2010 297.4790
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At least as I understand your question you want the differences of each month with the mean of those months, so you probably you want to use ave rather than aggregate:

diff.mean.ts <- ave(DF[["Value"]], 
                        list(format(DF[["Date"]], "%m")), FUN=function(x) x-mean(x) )

If you wanted it in the same dataframe, then just assign it as a column:

DF$ diff.mean.ts  <- diff.mean.ts 

The ave function is designed for adding columns to existing dataframes because it returns a vector of the same length as the number of values in the its first argument, in this case DF[["Value"]]. In the present instance it returns all 0's which is the correct answer because there is only one value for each month.

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Thanks! This is exactly what I was after! –  Alex Archibald Jan 20 '12 at 9:27

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