3

I'm trying to filter out multiple rows of data that I don't need in R but I'm not sure how to do it.

The data I'm using looks a bit like this:

  Category     Item Shop1 Shop2 Shop3
1    Fruit   Apples     4     6     0
2    Fruit  Oranges     0     2     7
3      Veg Potatoes     0     0     0
4      Veg   Onions     0     0     0
5      Veg  Carrots     0     0     0
6    Dairy  Yoghurt     0     0     0
7    Dairy     Milk     0     1     0
8    Dairy   Cheese     0     0     0

I only want to keep categories where at least one item has a positive value for at least one of the shops.

In this case, I want to get rid of all the Veg rows, because none of the shops have sold any vegetables. I want to keep all the Fruit rows, and I want to keep all the Dairy rows, even those with a value of zero across all shops, because one of the Dairy rows does have a value above 0.

I tried to use colSums after using group_by(Category) in the hope that it would just sum the contents of the Category each time, but it didn't work. I've also tried to add a column at the end for rowSums and to filter based on frequency, but I could only filter out individual rows this way, not rows based on the whole Category.

While I can filter out individual rows that have values of zero (like row 3 for example), my difficulty is keeping in rows like rows 6 and 8 where all the values for each shop are zero, but I want to keep these rows because other Dairy rows do have values above zero.

8

1) subset/ave rowSums(...) > 0 has one element for each row. That element is TRUE if there are non-zeros in that row. It assumes that negative values are not possible. (If negative values were possible then use rowSums(DF[-1:-2]^2) > 0 instead.) It also assumes that the shops are those columns past the first two. In particular, it will work for any number of shops. Then ave produces a TRUE for groups for which any of those values is TRUE and subset only keeps those. No packages are used.

subset(DF, ave(rowSums(DF[-1:-2]) > 0, Category, FUN = any))

giving:

  Category    Item Shop1 Shop2 Shop3
1    Fruit  Apples     4     6     0
2    Fruit Oranges     0     2     7
6    Dairy Yoghurt     0     0     0
7    Dairy    Milk     0     1     0
8    Dairy  Cheese     0     0     0

1a) A variation of this would be the following if you don't mind hard coding the shops:

subset(DF, ave(Shop1 + Shop2 + Shop3 > 0, Category, FUN = any))

2) dplyr

library(dplyr)
DF %>% group_by(Category) %>% filter(any(Shop1, Shop2, Shop3)) %>% ungroup

giving:

# A tibble: 5 x 5
# Groups:   Category [2]
  Category    Item Shop1 Shop2 Shop3
    <fctr>  <fctr> <int> <int> <int>
1    Fruit  Apples     4     6     0
2    Fruit Oranges     0     2     7
3    Dairy Yoghurt     0     0     0
4    Dairy    Milk     0     1     0
5    Dairy  Cheese     0     0     0

3) Filter/split Another base solution is:

do.call("rbind", Filter(function(x) any(x[-1:-2]), split(DF, DF$Category)))

giving:

        Category    Item Shop1 Shop2 Shop3
Dairy.6    Dairy Yoghurt     0     0     0
Dairy.7    Dairy    Milk     0     1     0
Dairy.8    Dairy  Cheese     0     0     0
Fruit.1    Fruit  Apples     4     6     0
Fruit.2    Fruit Oranges     0     2     7

4) dplyr/tidyr Use gather to convert the data to long form where there is one row for each value and then filter the groups using any. Finally convert back to wide form.

library(dplyr)
library(tidyr)
DF %>% 
  gather(shop, value, -(Category:Item)) %>% 
  group_by(Category) %>% 
  filter(any(value)) %>% 
  ungroup %>% 
  spread(shop, value)

giving:

# A tibble: 5 x 5
  Category    Item Shop1 Shop2 Shop3
*   <fctr>  <fctr> <int> <int> <int>
1    Dairy  Cheese     0     0     0
2    Dairy    Milk     0     1     0
3    Dairy Yoghurt     0     0     0
4    Fruit  Apples     4     6     0
5    Fruit Oranges     0     2     7

Note: The input in reproducible form is:

Lines <- "  Category     Item Shop1 Shop2 Shop3
1    Fruit   Apples     4     6     0
2    Fruit  Oranges     0     2     7
3      Veg Potatoes     0     0     0
4      Veg   Onions     0     0     0
5      Veg  Carrots     0     0     0
6    Dairy  Yoghurt     0     0     0
7    Dairy     Milk     0     1     0
8    Dairy   Cheese     0     0     0"

DF <- read.table(text = Lines)
  • 1
    That is great: feed ave a logical vector as it's first argument, then the final output can be used directly in subsetting. – lmo Jul 31 '17 at 12:48
  • Wow, thank you for the multiple solutions and clear explanations! – Rose Jul 31 '17 at 13:22
4

Here is a method in base R with rowSums, ave, and [.

dat[ave(rowSums(dat[grep("Shop", names(dat))]), dat$Category, FUN=max) > 0,]

rowSums calculates sales for each row in the shops variables (using grep to subset). The resulting vector is fed to ave which groups by dat$Category and returns the maximum sales for each. Finally, the original data.frame is subset based on whether sales are ever positive.

This returns

  Category    Item Shop1 Shop2 Shop3
1    Fruit  Apples     4     6     0
2    Fruit Oranges     0     2     7
6    Dairy Yoghurt     0     0     0
7    Dairy    Milk     0     1     0
8    Dairy  Cheese     0     0     0

data

dat <-
structure(list(Category = structure(c(2L, 2L, 3L, 3L, 3L, 1L, 
1L, 1L), .Label = c("Dairy", "Fruit", "Veg"), class = "factor"), 
    Item = structure(c(1L, 6L, 7L, 5L, 2L, 8L, 4L, 3L), .Label = c("Apples", 
    "Carrots", "Cheese", "Milk", "Onions", "Oranges", "Potatoes", 
    "Yoghurt"), class = "factor"), Shop1 = c(4L, 0L, 0L, 0L, 
    0L, 0L, 0L, 0L), Shop2 = c(6L, 2L, 0L, 0L, 0L, 0L, 1L, 0L
    ), Shop3 = c(0L, 7L, 0L, 0L, 0L, 0L, 0L, 0L)), .Names = c("Category", 
"Item", "Shop1", "Shop2", "Shop3"), class = "data.frame", row.names = c("1", 
"2", "3", "4", "5", "6", "7", "8"))
  • 1
    Nice. I was about to post df[!!ave(rowSums(df[3:5]), df$Category, FUN = function(i) sum(i) > 0),] – Sotos Jul 31 '17 at 12:40

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