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This is a my df (data.frame):

    group value
[1]    1     10
[2]    1     20
[3]    1     25
[4]    2     5
[5]    2     10
[6]    2     15 
    ...

I need to calculate difference row value by group.

So, I need a that result.

    group value diff
[1] 1     10    NA (becasue there is a no previous value)
[2] 1     20    10 (value[2]-value[1])
[3] 1     25    5  (vlaue[3]-value[2])
[4] 2     5     NA (because group is changed)
[5] 2     10    5  (value[5]-value[4])
[6] 2     15    5  (value[6]-value[5])
    ...

Although, I can handle this problem by using ddply, but it takes too much time. This is because I have a lot of groups in my df. (over 1,000,000 groups in my df)

Are there any other effective approaches to handle this problem?

Thanks.

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3 Answers 3

up vote 7 down vote accepted

The package data.table can do this fairly quickly.

require(data.table)
df <- data.table(group=rep(c(1,2),each=3),value=c(10,20,25,5,10,15))
#df <- data.table(df) #if df is already a data frame
setkey(df,group)
df[,diff:=c(NA,diff(value)),by=group]    
#   group value diff
#1:     1    10   NA
#2:     1    20   10
#3:     1    25    5
#4:     2     5   NA
#5:     2    10    5
#6:     2    15    5
df <- as.data.frame(df) #if you want to convert back to old data.frame syntax
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1  
Any chance you know a ddply solution? I had been working at this for a while before I reasoned that might need a different function. . . –  Jack Ryan Mar 7 '13 at 17:35
1  
I assume it would be something like ddply(df, .(group), transform, diff=c(NA,diff(value))) –  Blue Magister Mar 7 '13 at 18:21

try this with tapply

df$diff<-as.vector(unlist(tapply(df$value,df$group,FUN=function(x){ return (c(NA,diff(x)))})))
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3  
this is what I had to do: df$diff <- unlist(tapply(df$value,df$group, function(x) c(NA,diff(x)))) –  Tyler Rinker Feb 13 '13 at 5:24

You can use the base function ave() for this

df <- data.frame(group=rep(c(1,2),each=3),value=c(10,20,25,5,10,15))
df$diff <- ave(df$value, factor(df$group), FUN=function(x) c(NA,diff(x)))

which returns

  group value diff
1     1    10   NA
2     1    20   10
3     1    25    5
4     2     5   NA
5     2    10    5
6     2    15    5
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