1

I have a dataframe in R concerning houses. This is a small sample:

Address                              Type       Rent
Glasgow;Scotland                     House      1500
High Street;Edinburgh;Scotland      Apartment    1000
Dundee;Scotland                     Apartment    800
South Street;Dundee;Scotland        House       900

I would like to just pull out the last two instances of the Address column into a City and County column in my dataframe.

I have used mutate and strsplit to split this column by:

data<-mutate(dataframe, split_add = strsplit(dataframe$Address, ";")

I now have a new column in my dataframe which resembles the following:

split_add                             
c("Glasgow","Scotland")                     
c("High Street","Edinburgh","Scotland")      
c("Dundee","Scotland")                    
c("South Street","Dundee","Scotland")  

How to I extract the last 2 instances of each of these vector observations into columns "City" and "County"?

I attempted: data<-mutate(data, city=split_add[-2] )) thinking it would take the second instance from the end of the vectors- but this did not work.

  • Could you please use dput() to enable reproducible example? – tigerloveslobsters Apr 25 '18 at 2:24
  • You are looking for tail(x,2)..that is the code you are looking for – Onyambu Apr 25 '18 at 2:37
1

I thinking about another way of dealing with this problem.

1.Creating a dataframe with the split_add column data

c("Glasgow","Scotland")                      
c("High Street","Edinburgh","Scotland")      
c("Dundee","Scotland")                    
c("South Street","Dundee","Scotland")  

test_data <- data.frame(split_add <- c("Glasgow, Scotland",                     
                          "High Street, Edinburgh, Scotland",      
                          "Dundee, Scotland",                    
                          "South Street, Dundee, Scotland"),stringsAsFactors = F)
names(test_data) <- "address"

2.Use separate() from tidyr to split the column

library(tidyr)

new_test <- test_data %>% separate(address,c("c1","c2","c3"), sep=",")

3.Use dplyr and ifelse() to only reserve the last two columns

library(dplyr)
new_test %>% 
  mutate(city = ifelse(is.na(c3),c1,c2),county = ifelse(is.na(c3),c2,c3)) %>% 
  select(city,county)

The final data looks like this.

enter image description here

2

using tidyr::separate() with the fill = "left" option is probably your best bet...

dataframe <- read.table(header = T, stringsAsFactors = F, text = "
Address                          Type       Rent
Glasgow;Scotland                 House      1500
'High Street;Edinburgh;Scotland' Apartment  1000
Dundee;Scotland                  Apartment  800
'South Street;Dundee;Scotland'   House      900
")

library(tidyr)

separate(dataframe, Address, into = c("Street", "City", "County"), 
         sep = ";", fill = "left")

#         Street      City   County      Type Rent
# 1         <NA>   Glasgow Scotland     House 1500
# 2  High Street Edinburgh Scotland Apartment 1000
# 3         <NA>    Dundee Scotland Apartment  800
# 4 South Street    Dundee Scotland     House  900
-2

Assuming that you're using dplyr

data <- mutate(dataframe, split_add = strsplit(Address, ';'), City = tail(split_add, 2)[1], Country = tail(split_add, 1))

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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