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Below is a part of my rather large table called "input":

        [,1]     [,2]   [,3]             
[7146,] 20100324 7.70   4.0000000
[7147,] 20100324 2.22   0.0000000
[7148,] 20100325 2.12   0.0000000
[7149,] 20100326 2.29   0.0000000
[7150,] 20100327 2.10   0.0000000
[7151,] 20100328 2.26   2.0000000
[7152,] 20100328 2.01   1.6000000
[7153,] 20100328 2.17   0.0000000
[7154,] 20100329 1.92   0.0000000
[7155,] 20100330 2.15   0.0000000

What I am trying to do is as follows:

I want to aggregate the rows that have the same date (dates are stated in column [,1]) and sum the values of these rows in columns [,2] and [,3] divided by the number of rows that are aggregated.

The output would be something like this:

        [,1]  [,2]   [,3]             
[1,] 20100324 4.96   2.0000000 # e.g: [1,2] = (input[7146,2] + input[7147,2])/2 = (7.70 
[2,] 20100325 2.12   0.0000000                + 2.22)/2 = 4.96 
[3,] 20100326 2.29   0.0000000
[4,] 20100327 2.10   0.0000000
[5,] 20100328 2.15   1.2000000
[6,] 20100329 1.92   0.0000000
[7,] 20100330 2.15   0.0000000

Help would be very much appreciated!

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1 Answer 1

up vote 1 down vote accepted

Your sampla data

df<-read.table(text="           
 20100324 7.70   4.0000000
 20100324 2.22   0.0000000
 20100325 2.12   0.0000000
 20100326 2.29   0.0000000
 20100327 2.10   0.0000000
 20100328 2.26   2.0000000
 20100328 2.01   1.6000000
 20100328 2.17   0.0000000
 20100329 1.92   0.0000000
 20100330 2.15   0.0000000")

One way is to use function ddply() and then calculate colMeans() for each column except first, that is used to split data.

library(plyr)
ddply(df,.(V1),colMeans)
        V1       V2  V3
1 20100324 4.960000 2.0
2 20100325 2.120000 0.0
3 20100326 2.290000 0.0
4 20100327 2.100000 0.0
5 20100328 2.146667 1.2
6 20100329 1.920000 0.0
7 20100330 2.150000 0.0

The same result can be achieved with aggregate().

aggregate(.~V1,data=df,mean)
        V1       V2  V3
1 20100324 4.960000 2.0
2 20100325 2.120000 0.0
3 20100326 2.290000 0.0
4 20100327 2.100000 0.0
5 20100328 2.146667 1.2
6 20100329 1.920000 0.0
7 20100330 2.150000 0.0

Third options is to use advantages of package data.table, especially if you have large data frame.

 library(data.table)
#Convert your data frame to data table and set column V1 as key.
 dt<-data.table(df,key="V1")
#Calculate mean for each column .SD means subset of your data table
 dt[,lapply(.SD,mean),by=V1]
         V1       V2  V3
1: 20100324 4.960000 2.0
2: 20100325 2.120000 0.0
3: 20100326 2.290000 0.0
4: 20100327 2.100000 0.0
5: 20100328 2.146667 1.2
6: 20100329 1.920000 0.0
7: 20100330 2.150000 0.0
share|improve this answer
    
Thx for the respons! I still have one problem though. I cannot use the function: df<-read.table(text=""), because i cannot copy the entire table in R since it is to big. And when I insert: "input" instead of "df" and "input[,1]" in the ddply function instead of "V1" as shown shown: "ddply(input,.(input[,1]),colMeans)", I get the following error: Error in eval.quoted(.variables, data) : envir must be either NULL, a list, or an environment. –  MB123 Apr 30 '13 at 10:21
    
This line was just the way I put your data in my R session. Instead of df, use real name of your data frame and real names of columns. –  Didzis Elferts Apr 30 '13 at 10:25
1  
Else you can convert your matrix to data.frame to use solutions provided above. –  Didzis Elferts Apr 30 '13 at 10:31
    
Thats it! Works now. Had to convert matrix to data.frame. Thanks a lot for the help! –  MB123 Apr 30 '13 at 10:36

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