I am trying to use R to create a frequency table of products (by category) that are often bought together.

I have data the contains the following information:

OrderID CategoryCode4

On_line_Data2 <- read_excel("On-line Data2.xlsx", col_types =c("text","text"))

Effectively what it is is, people have bought multiple products and we want to create a frequency chart for how many times 'A' was bought with 'B'; 'A' was bought with 'C'; 'A' with 'D'; 'B' was bought with 'C'; 'B' with 'D'; 'C' with 'D' across a large list of items.

The orderID is unique for every order but can be repeated for each line as it is recorded against each product (which is only represented by a category code. Each category code can be repeated in each order so the data could be below:

   OrderID   CategoryCode4
    Order1    catA
    Order1    catA
    Order1    catB
    Order2    catA
    Order2    catB
    Order3    catA
    Order3    catC
    Order4    catA
    Order4    catD
    Order5    catA
    Order5    catE

The output would be something like

CatA & CatB 2
CatA & CatC 1
CatA & CatD 1
CatA & CatE 1

I don't care if the output has 'CatA & CatB = 2' as well as 'CatB & CatA = 2' or this is equal to 3 because of the 2 times of A in Order1 although this is not idea.

I am completely stuck, I'm not even sure what to Google to be able to do this. Any help would be GREATLY appreciated.


I'm not sure what your data looks like, you should at least provide a subset of your data. This is an attempt with the mtcars data to give you an idea.

df <- mtcars %>% group_by(gear) %>% summarise(comb = list(combn(disp, 2)))
comb <- Reduce(rbind, lapply(df$comb, t))
table(comb[,1], comb[,2])

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