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I have a data.table with 11 variables and 200,000+ rows. I am trying to find the unique identifier (in other words, key) in this data.table.

I am looking for something like isid in Stata, which checks whether the specified variables uniquely identify the observations. Can someone please help?

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The rownames are required to be unique in dataframes. You have not told us enough about the isid attribute in Stata to say much more. You also need to clarify whether you are using the contributed data.table package or are merely confused about the proper term for a data.frame. –  BondedDust Apr 16 '13 at 19:22
    
I don't know about Stata, but how about rownames? they are unique for each row... –  Arun Apr 16 '13 at 19:22
    
@DWin - I am not confusing data.frame for data.table. I am using the package data.table. I was hoping someone with R and Stata knowledge to answer this question. But since you don't seem to be familiar with Stata, isid var1 var2 checks if var1 and var2 form the key in the dataset. I am looking for something similar in R. Given a dataset with a lot of variables, I just want to assert that the key is what I think it is. –  user2012406 Apr 16 '13 at 20:28
    
@Arun Doesn't help. Thanks though! –  user2012406 Apr 16 '13 at 20:30
1  
I believe you are confused about the 'key' in data.table-objects being a unique identifier. –  BondedDust Apr 16 '13 at 20:44

2 Answers 2

up vote 2 down vote accepted

This doesn't exactly answer the OP question [I haven't used the data.table yet], but it will help R only user's to answer the OP's question. My focus will be on explaining how isid is actually working on Stata. I use data from R database (you need to install optmatch for this data).

library(optmatch)
data(nuclearplants)
sample<-nuclearplants

I am focusing only on subset of data frame since my goal is to only explain what isid is doing:

sample<-sample[,c(1,2,5,10)]
head(sample,5)
 cost  date  cap cum.n
H 460.05 68.58  687    14
I 452.99 67.33 1065     1
A 443.22 67.33 1065     1
J 652.32 68.00 1065    12
B 642.23 68.00 1065    12

Now, when I use the Stata command isid cost it doesn't display anything which means there are no duplicate observations on cost (R command for this is unique(sample$cost) orsample[duplicated(sample),]`

[1] cost  date  cap   cum.n
<0 rows> (or 0-length row.names).)

However when we use isid date i.e. on date variables, Stata reports that it is not unique. Alternatively, if you run duplicates date examples, Stata will give you duplicate observations as follows:

. duplicates example date

Duplicates in terms of date

  +-------------------------------+
  | group:   #   e.g. obs    date |
  |-------------------------------|
  |      1   2         27   67.25 |
  |      2   2          2   67.33 |
  |      3   3         29   67.83 |
  |      4   2          4      68 |
  |      5   5          8   68.42 |
  |-------------------------------|
  |      6   2          1   68.58 |
  |      7   2         12   68.75 |
  |      8   3         14   68.92 |
  +-------------------------------+

To interpret the output, it is saying that observation 67.25 has two repeated observations (as indicated by #). The first observation corresponds to row 27 (it doesn't identify the row number of second duplicate with 67.25). Group gives the unique identifier for each repetition.

R command for the same is duplicated(sample$date). 
duplicated(sample$date)
 [1] FALSE FALSE  TRUE FALSE  TRUE FALSE FALSE FALSE  TRUE FALSE  TRUE FALSE  TRUE FALSE  TRUE  TRUE FALSE  TRUE FALSE  TRUE  TRUE
[22] FALSE FALSE FALSE FALSE FALSE FALSE FALSE FALSE  TRUE  TRUE  TRUE

To identify the unique observation we can also use unique(sample$date) in R. 

We can do same for two variables isid cost date. Again, the Stata doesn't identify duplicate observations across two variables. The same is true when you use unique(sample[,c(1,2)] in R.

Again if I run isid on all four variables then Stata says that it is unique(no warnings).

duplicates example  cost date cap cum_n

Duplicates in terms of cost date cap cum_n

(0 observations are duplicates)

The same with unique(sample) in R.

Conclusion: I therefore, think that as long as one variable is unique (i.e. it has no duplicate observations), the combination of the variables which include the unique variable should be always unique. Please correct me if I am wrong.

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user1493368 has given a detailed example of isid in action. Note that isid is not really fundamental. It's a convenience command. One could go bysort cost : assert _N == 1 and there would be silent consent (a return code _rc of 0) or bysort date: assert _N == 1 and there would be an error message (a return code of 9). –  Nick Cox Apr 17 '13 at 0:00

I think you are confused on a few points about data.tables and keys.

  • A data.table will not have a key unless you explicitly set it.
  • A data.table key does not have to be unique.

You can write a function that will check if certain columns could create a unique identifer for a dataset.

I've used data.table here, and have taken care to use unique on an unkeyed copy of the data.table.

This is not efficient.

 isid <- function(columns, data, verbose  = TRUE){
      if(!is.data.table(data)){
        copyd <- data.table(data)
      } else{ 
      copyd <- copy(data)
      }
     if(haskey(copyd)){
       setkey(copyd, NULL)
     }
    # NA values don't work in keys for data.tables
    any.NA <- Filter(columns, f= function(x) any(is.na(copyd[[x]])))
    if(verbose){
      for(aa in seq_along(any.NA)){message(sprintf('Column %s contains NA values', any.NA[aa] ))}
    }
    validCols <- setdiff(columns, any.NA)
    # cycle through columns 1 at a time
    ncol <- 1L
    validKey <- FALSE
    while(!isTRUE(validKey) && ncol <= length(validCols)){
      anyValid <- combn(x = validCols, m = ncol, FUN = function(xn){
        subd <- copyd[, xn, with = FALSE]
        result <- nrow(subd) == nrow(unique(subd))
        list(cols = xn, valid = result)
      }, simplify = FALSE)

      whichValid <- sapply(anyValid, `[[`, 'valid')
      validKey <- any(whichValid)
      ncol <- ncol + 1L
    }

 if(!validKey){
 warning('No combinations are unique')
 return(NULL)} else {
   valid.combinations <- lapply(anyValid, `[[`, 'cols')[whichValid]
   if(length(valid.combinations) > 1){
    warning('More than one combination valid, returning the first only')
    }
    return(valid.combinations[[1]])
   }
 }

some examples in use

 oneU <- data.table(a = c(2,1,2,2), b = c(1,2,3,4))
 twoU  <- data.table(a = 1:4, b = letters[1:4])
 bothU <- data.table(a = letters[1:2], b = rep(letters[1:2], each = 2))
 someNA <- data.table(a = c(1,2,3,NA), b = 1:4)

isid(names(oneU), oneU)
# [1] "b"
isid(names(twoU), twoU)
# [1] "a"
# Warning message:
# In isid(names(twoU), twoU) :
#   More than one combination valid, returning the first only
isid(names(bothU), bothU)
# [1] "a" "b"
isid(names(someNA), someNA)
# Column a contains NA values
# [1] "b"

# examples with no valid identifiers

isid('a', someNA)
## Column a contains NA values
## NULL
## Warning message:
## In isid("a", someNA) : No combinations are unique
isid('a', oneU)
## NULL
## Warning message:
##  In isid("a", oneU) : No combinations are unique
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