Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

Being new to R, I'm not sure how to go about solving this problem. Hope you can help.

I have a batch tree like the smaller version below.

ID  Batch   Input_Bx    Input_Wt    Imp_In  Imp_Out
4   B123/1  A123/1  75.1    0.08    0.06
12  B123/2  A123/1  25.2    0.08    0.04
3   B123/2  A123/2  50.1    0.02    0.04
9   B123/3  A123/2  50.0    0.02    0.05

What I want to do, is for every case where there are several input batches (Input_Bx) (e.g. B123/2), I want to multiple the Input_Wt by Imp_In, sum these products for all of the input batches and divide by the sum of the weights of the input batches. So for this fragment of the data table I would get:

Batch B123/1: (75.1 * 0.08) / (75.1) = 0.08
Batch B123/2: (25.5 * 0.08 + 50.1 * 0.02) / (25.2 + 50.1) = 0.04039841
Batch B123/3: (50.0 * 0.02) / (50.0) = 0.02

And produce a new df like:

Batch   Eff_Imp Imp_Out
B123/1  0.08    0.06
B123/2  0.04039841  0.04
B123/3  0.02    0.05

An example would be really helpful.

TIA.

share|improve this question
add comment

3 Answers 3

up vote 0 down vote accepted

And the ddplyalternative:

library(plyr)

ddply(.data = df, .variables = .(Batch), summarize,
      Eff_imp = weighted.mean(Imp_In, Input_Wt),
      Imp_out = Imp_out[1]) # assuming one value of Imp_out within Batch

#    Batch    Eff_imp Imp_out
# 1 B123/1 0.08000000    0.06
# 2 B123/2 0.04007968    0.04
# 3 B123/3 0.02000000    0.05
share|improve this answer
    
Thanks. I've not tried the plyr package. Looks like it could be really useful. –  Dave Oct 27 '13 at 12:45
    
Your solution works the best for me. (Busy reading plyr tutorials!) –  Dave Oct 27 '13 at 15:50
    
@Dave, Glad to help! Good luck! –  Henrik Oct 27 '13 at 15:57
add comment

A way is the following:

#your data
DF <- read.table(text = 'ID  Batch   Input_Bx    Input_Wt    Imp_In  Imp_Out
4   B123/1  A123/1  75.1    0.08    0.06
12  B123/2  A123/1  25.2    0.08    0.04
3   B123/2  A123/2  50.1    0.02    0.04
9   B123/3  A123/2  50.0    0.02    0.05', header = T, stringsAsFactors = F)

#`split` your data based on `Batch` and calculate the `weighted.mean` in each 
w.m <- lapply(split(DF, DF$Batch), function(x) weighted.mean(x$Imp_In, x$Input_Wt))
#w.m
#$`B123/1`
#[1] 0.08

#$`B123/2`
#[1] 0.04007968

#$`B123/3`
#[1] 0.02

#combine, in a `data.frame`, the `Batch` / its weighted mean / its `Imp_Out`
#I suppose same `Batch`es have same `Imp_Out`s
newDF <- data.frame(cbind(names(w.m), unlist(w.m), 
                   aggregate(DF$Imp_Out, list(DF$Batch), unique)$x), row.names = NULL)

names(newDF) <- c("Batch", "Eff_Imp", "Imp_Out")
#newDF
#   Batch            Eff_Imp Imp_Out
#1 B123/1               0.08    0.06
#2 B123/2 0.0400796812749004    0.04
#3 B123/3               0.02    0.05
share|improve this answer
    
You're a star! Much appreciated. Thank you. –  Dave Oct 27 '13 at 11:42
add comment

You can use the data.table library -

dt <- data.table(df)
dt[,
  list(
    Eff_Imp = weighted.mean(x = Imp_in, w = Input_Wt )
  ),
  by = "Batch"
]
share|improve this answer
    
Thanks. I'll have a play with this. –  Dave Oct 27 '13 at 12:46
add comment

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.