# Weighted Mean by Date

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"))
``````

-
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

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
``````
-

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)))
``````
-

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
``````
-