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I have the following dataframe:

df = data.frame(date = c("26/06/2013", "26/06/2013",  "26/06/2013",  "27/06/2013", "27/06/2013", "27/06/2013", "28/06/2013", "28/06/2013",   "28/06/2013"), return = c(".51", ".32", ".34", ".39", "1.1", "3.2", "2.1", "5.3", "2.1"), cap = c("500", "235", "392", "213", "134", "144", "232", "155", "213"), weight = c("0.443655723", "0.20851819", "0.347826087", "0.433808554", "0.272912424", "0.293279022", "0.386666667", "0.258333333", "0.355"))

I would like to calculate:

1) The last column of "weight". Which is the weights of the "cap" column PER DAY.

2) The weighted "cap" mean of "return" PER DAY. I want to get the following output:

result = data.frame(date = c("26/06/2013", "27/06/2013", "28/06/2013"), cap.weight.mean = c("0.411251109", "1.407881874", "2.926666667"))

Thanks for your support!

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hello and welcome to SO. Can you please elaborate on your question. Specifically, what is meant by "last column of weight"? Is weight not the last column of df. Also, what do you mean by "weighted cap mean of return" ? –  Ricardo Saporta Jul 13 '13 at 0:40

3 Answers 3

Another possibility using plyr function:

library(plyr)
# Change factor to numeric
> df[,-1]<-sapply(df[,-1],function(x){as.numeric(as.character(x))})
> ddply(df,.(date),summarize,cap.weight.mean=weighted.mean(return,weight))
        date cap.weight.mean
1 26/06/2013       0.4112511
2 27/06/2013       1.4078819
3 28/06/2013       2.9266667
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If necessary, change factors to numeric first

df$return=as.numeric(levels(df$return))[df$return]
df$cap=as.numeric(levels(df$cap))[df$cap]
df$weight=as.numeric(levels(df$weight))[df$weight]

Question 1)

 library(plyr)
 #pretend weight column were absent in df
 ddply(df[,-ncol(df)],"date",function(x) data.frame(x,weight=x$cap/sum(x$cap)))

Question 2)

 library(plyr)
 ddply(df,"date",function(x) data.frame(date=x$date[1],cap.weight.mean=sum(x$cap*x$return)/sum(x$cap)))
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Here's another option using by!

After converting to numeric as cryo111 mentioned.

R> by(df, df$date, FUN = function(x) weighted.mean(x$return, w = x$weight) )
df$date: 26/06/2013
[1] 0.4112511
------------------------------------------------------------ 
df$date: 27/06/2013
[1] 1.407882
------------------------------------------------------------ 
df$date: 28/06/2013
[1] 2.926667

That produces the info in your result data.frame. I am guessing that is what you are looking for

Here's another solution using memisc:::aggregate.formula

> library(memisc)
> aggregate(weighted.mean(return, weight) ~ date, data = df)
>        date weighted.mean(return, weight)
1 26/06/2013                     0.4112511
4 27/06/2013                     1.4078819
7 28/06/2013                     2.9266667
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