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I'm looking to use R to run an ABC analysis also known as Pareto analysis. The ABC analysis is a business term used to define an categorization technique often used in materials management.

There are no fixed threshold for each class, different proportion can be applied based on objective and criteria. ABC Analysis is similar to the Pareto principle in that the 'A' items will typically account for a large proportion of the overall value but a small percentage of number of items.

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maybe simply you can use abc package. –  agstudy Jul 8 '13 at 20:48
    
+1 for abc package - this is very popular with the students in North Carolina. It doesn't help with the analysis much, but they enjoy their work more. –  Jack Ryan Jul 8 '13 at 21:20
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1 Answer

up vote 1 down vote accepted

In all seriousness, I think the abc package is coincidental naming of a common supply management technique. The abc package creates a model of a known variable while the OP wants to create a classification variable based on a single known variable (revenue). In the abc package, the record is classified based on the value of the variable; per the abc technique in question, the record is classified based on the value of the aggregate. E.g. all part number 4132457 are classified as "A".

This is a plain vanilla calculation: you're no better off in R than you are in a spreadsheet. If one insists on an R implementation, I would recommend something along the lines of:

library(plyr)
z <- data.frame(Part.Number =c(rep(letters[15:1], seq_along(letters[15:1]))), 
                Price = c(rep(1:15, seq_along(15:1))), 
                Qty.Sold = sample(1:120))
z[90:120, ]$Qty.Sold <- z[90:120, ]$Qty.Sold * 10 # creates fake data
z.summary <- ddply(z, .(Part.Number), summarise, 
                   Revenue = sum(Price * Qty.Sold)) # summarise fake data

z.summary <- within(z.summary, {
    Percent.Revenue <- cumsum(rev(sort(Revenue)))/sum(Revenue)
    ABC <- ifelse(Percent.Revenue > 0.91, "C",
           ifelse(Percent.Revenue < 0.81, "A", "B"))
})

z.summary
#    Part.Number Revenue Percent.Revenue ABC
# 1            a  140850       0.4461246   A
# 2            b  113960       0.8070784   A
# 3            c   21788       0.8760892   B
# 4            d    8220       0.9021250   B
# 5            e    7238       0.9250504   C
# 6            f    6390       0.9452900   C
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