This question may sound similar to others, but I hope it is different enough. I want to take a specific list of values and count how often they appear in another list of values where non-occurring values are retuned as '0'.
I have a Data Frame (df1) with the following values:
Items <- c('Carrots','Plums','Pineapple','Turkey') df1<-data.frame(Items) >df1 Items 1 Carrots 2 Plums 3 Pineapple 4 Turkey
And a second Data Frame (df2) that contains a column called 'Thing':
> head(df2,n=10) ID Date Thing 1 58150 2012-09-12 Potatoes 2 12357 2012-09-28 Turnips 3 50788 2012-10-04 Oranges 4 66038 2012-10-11 Potatoes 5 18119 2012-10-11 Oranges 6 48349 2012-10-14 Carrots 7 23328 2012-10-16 Peppers 8 66038 2012-10-26 Pineapple 9 32717 2012-10-28 Turnips 10 11345 2012-11-08 Oranges
I know the word 'Turkey' only appears in df1 NOT in df2. I want to return a frequency table or count of the items in df1 that appears in df2 and return '0' for the count of Turkey.
How can I summarize values of on Data Frame column using the values from another? The closest I got was:
df2%>% count (Thing) %>% filter(Thing %in% df1$Items,)
But this return a list of items filtered between df1 and df2 so 'Turkey' gets excluded. So close!
> df2%>% count (Thing) %>% filter(Thing %in% df1$Items,) # A tibble: 3 x 2 Thing n <fctr> <int> 1 Carrots 30 2 Pineapple 30 3 Plums 38
I want my output to look like this:
1 Carrots 30 2 Pineapple 30 3 Plums 38 4 Turkey 0
I am newish to R and completely new to dplyr.