14

I have a dataframe that has two rows:

| code | name  | v1 | v2 | v3 | v4 |
|------|-------|----|----|----|----|
| 345  | Yemen | NA | 2  | 3  | NA |
| 346  | Yemen | 4  | NA | NA | 5  |

Is there an easy way to merge these two rows? What if I rename "345" in "346", would that make things easier?

  • 1
    You will need some rule for combining non-NA column. Such as will you always take the first occcurence or last, the mean of numeric columns etc. – mnel Jan 10 '13 at 23:04
  • 1
    The coalesce() functionality is needed here . Found a good discussion on this thread : [link]stackoverflow.com/questions/19253820/… – GoodGuyIroh Mar 5 '15 at 11:56
10

You can use aggregate. Assuming that you want to merge rows with identical values in column name:

aggregate(x=DF[c("v1","v2","v3","v4")], by=list(name=DF$name), min, na.rm = TRUE)
   name v1 v2 v3 v4
1 Yemen  4  2  3  5

This is like the SQL SELECT name, min(v1) GROUP BY name. The min function is arbitrary, you could also use max or mean, all of them return the non-NA value from an NA and a non-NA value if na.rm = TRUE. (An SQL-like coalesce() function would sound better if existed in R.)

However, you should check first if all non-NA values for a given name is identical. For example, run the aggregate both with min and max and compare, or run it with range.

Finally, if you have many more variables than just v1-4, you could use DF[,!(names(DF) %in% c("code","name"))] to define the columns.

  • running your example gives me Error in DF$name : $ operator is invalid for atomic vectors – Matt O'Brien Jan 20 '15 at 1:17
  • @MattO'Brien how does your DF look like? Is it a data frame? Does if have multiple columns? Do you have code to replicate the error? – Daniel Sparing Jan 20 '15 at 10:24
3

Adding dplyr & data.table solutions for completeness

Using dplyr::coalesce()

library(dplyr)

sum_NA <- function(x) {if (all(is.na(x))) x[NA_integer_] else sum(x, na.rm = TRUE)}

df %>% 
  group_by(name) %>% 
  summarise_all(sum_NA)
#> # A tibble: 1 x 6
#>   name   code    v1    v2    v3    v4
#>   <fct> <dbl> <dbl> <dbl> <dbl> <dbl>
#> 1 Yemen   691     4     2     3     5

# Ref: https://stackoverflow.com/a/45515491
# Supply lists by splicing them into dots:
coalesce_by_column <- function(df) {
  return(dplyr::coalesce(!!! as.list(df)))
}

df %>% 
  group_by(name) %>% 
  summarise_all(coalesce_by_column)
#> # A tibble: 1 x 6
#>   name   code    v1    v2    v3    v4
#>   <fct> <dbl> <dbl> <dbl> <dbl> <dbl>
#> 1 Yemen   345     4     2     3     5

Using data.table

# Ref: https://stackoverflow.com/q/28036294/
library(data.table)
setDT(df)[, lapply(.SD, na.omit), by = name]
#>     name code v1 v2 v3 v4
#> 1: Yemen  345  4  2  3  5
#> 2: Yemen  346  4  2  3  5

setDT(df)[, code := NULL][, lapply(.SD, na.omit), by = name]    
#>     name v1 v2 v3 v4
#> 1: Yemen  4  2  3  5

setDT(df)[, code := NULL][, lapply(.SD, sum_NA), by = name]
#>     name v1 v2 v3 v4
#> 1: Yemen  4  2  3  5

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