23

I want to create an unique ID in R based on two columns of latitude and longitude so that duplicated locations have the same cluster ID.

For example:

LAT        LONG    Cluster_ID
13.5330 -15.4180   1
13.5330 -15.4180   1
13.5330 -15.4180   1
13.5330 -15.4180   1
13.5330 -15.4170   2
13.5330 -15.4170   2
13.5330 -15.4170   2
13.5340 -14.9350   3
13.5340 -14.9350   3
13.5340 -15.9170   4
13.3670 -14.6190   5
0

4 Answers 4

27

Here's one way using interaction.

d <- read.table(text='LAT LONG
13.5330 -15.4180 
13.5330 -15.4180 
13.5330 -15.4180 
13.5330 -15.4180 
13.5330 -15.4170 
13.5330 -15.4170 
13.5330 -15.4170 
13.5340 -14.9350 
13.5340 -14.9350 
13.5340 -15.9170 
13.3670 -14.6190', header=TRUE)

d <- transform(d, Cluster_ID = as.numeric(interaction(LAT, LONG, drop=TRUE)))

#       LAT    LONG Cluster_ID
# 1  13.533 -15.418          2
# 2  13.533 -15.418          2
# 3  13.533 -15.418          2
# 4  13.533 -15.418          2
# 5  13.533 -15.417          3
# 6  13.533 -15.417          3
# 7  13.533 -15.417          3
# 8  13.534 -14.935          4
# 9  13.534 -14.935          4
# 10 13.534 -15.917          1
# 11 13.367 -14.619          5

EDIT: Incorporated @Spacedman's suggestion to supply drop=TRUE to interaction.

3
  • 2
    Adding drop=TRUE to your interaction call will give you numbers from 1 to 5 rather than the random looking codes you have here.
    – Spacedman
    Nov 26, 2012 at 16:28
  • ok, i have a further question by the way. my data should have years for 1990:2010 but for most of the clusters, some years are missing. i want R to search which are missing then fill them in. further, i also want to create NAs for the response variable and duplicate the other variables in the new cases that have been created. help please if u can. thanks, Jones
    – jonestats
    Nov 27, 2012 at 13:47
  • @user1835888 Comments aren't the best place to ask. Post another question with a reproducible example showing what you you've tried, and someone will help you. Nov 27, 2012 at 13:49
13

The data:

dat <- read.table(text="
LAT        LONG
13.5330 -15.4180
13.5330 -15.4180
13.5330 -15.4180
13.5330 -15.4180
13.5330 -15.4170
13.5330 -15.4170
13.5330 -15.4170
13.5340 -14.9350
13.5340 -14.9350
13.5340 -15.9170
13.3670 -14.6190", header = TRUE)

These commands create an id variable starting with 1:

comb <- with(dat, paste(LAT, LONG))
within(dat, Cluster_ID <- match(comb, unique(comb)))

The output:

      LAT    LONG Cluster_ID
1  13.533 -15.418          1
2  13.533 -15.418          1
3  13.533 -15.418          1
4  13.533 -15.418          1
5  13.533 -15.417          2
6  13.533 -15.417          2
7  13.533 -15.417          2
8  13.534 -14.935          3
9  13.534 -14.935          3
10 13.534 -15.917          4
11 13.367 -14.619          5
0
13

.GRP was added to data.table 1.8.3, allowing you to do the following:

# Your data, as a data.frame
dat <- read.table(text='LAT LONG
13.5330 -15.4180 
13.5330 -15.4180 
13.5330 -15.4180 
13.5330 -15.4180 
13.5330 -15.4170 
13.5330 -15.4170 
13.5330 -15.4170 
13.5340 -14.9350 
13.5340 -14.9350 
13.5340 -15.9170 
13.3670 -14.6190', header=TRUE)

# Convert it to a data.table
# with keys as the combination of LAT and LONG
library(data.table)
DT <- data.table(dat, key="LAT,LONG")
DT[, Cluster_ID:=.GRP, by=key(DT)]
DT
#        LAT    LONG Cluster_ID
#  1: 13.367 -14.619          1
#  2: 13.533 -15.418          2
#  3: 13.533 -15.418          2
#  4: 13.533 -15.418          2
#  5: 13.533 -15.418          2
#  6: 13.533 -15.417          3
#  7: 13.533 -15.417          3
#  8: 13.533 -15.417          3
#  9: 13.534 -15.917          4
# 10: 13.534 -14.935          5
# 11: 13.534 -14.935          5
1
  • Thank u all for the responses. they are working perfectly and it has saved me a lot of time. after creating a unique id, the next thing i would like to do is duplicate some fields and create NAs for others. my data is in years and not all clusters have data for all the years, so first i want to fill up the missing years (1990:2010) for all the ids. then fill the rest of the fields where i have added the years and create NAs for others where i want to predict.
    – jonestats
    Nov 27, 2012 at 13:16
3

Compare performance suggested solutions:

df <- read.table(text='LAT LONG
13.5330 -15.4180 
13.5330 -15.4180 
13.5330 -15.4180 
13.5330 -15.4180 
13.5330 -15.4170 
13.5330 -15.4170 
13.5330 -15.4170 
13.5340 -14.9350 
13.5340 -14.9350 
13.5340 -15.9170 
13.3670 -14.6190', header=TRUE)
f1 <- function(df, cols) {
    df$id <- as.numeric(interaction(df[cols], drop = TRUE))
    df
}
f2 <- function(df, cols) {
    comb <- do.call(paste, c(as.list(df[cols]), sep = "."))
    df$id <- match(comb, unique(comb))
    df
}
f2(df, 1:2)
#>       LAT    LONG id
#> 1  13.533 -15.418  1
#> 2  13.533 -15.418  1
#> 3  13.533 -15.418  1
#> 4  13.533 -15.418  1
#> 5  13.533 -15.417  2
#> 6  13.533 -15.417  2
#> 7  13.533 -15.417  2
#> 8  13.534 -14.935  3
#> 9  13.534 -14.935  3
#> 10 13.534 -15.917  4
#> 11 13.367 -14.619  5
microbenchmark::microbenchmark(f1(df, 1:2), f2(df, 1:2))
#> Unit: microseconds
#>         expr     min      lq      mean   median       uq      max neval cld
#>  f1(df, 1:2) 486.400 510.422 575.26659 573.3945 594.1165 1622.243   100   b
#>  f2(df, 1:2)  72.952  79.208  86.09265  83.5275  89.7195  159.740   100  a 

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