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I have a set of key (character) <-> hash (integer) associations in R. I'd like to store these associations in a single structure that allows me to reference a key/hash pair by key, and also by hash.

So something like

"hello" <-> 1234

in variable db.

And access it with (ish; doesn't have to be this exact access syntax):

db["hello"] -> 1234
db[1234] -> "hello"

I tried using a data frame, and naming the rownames the keys. But then I cannot reference a row by hash integer. If I use hash integers as rownames, then I cannot reference by keyname, etc.

My current solution is to keep two dbs as two data frames. One has the hashes as rownames, the other has the keys as rownames. This works, but it seems a bit awkward and repetitive to keep around two identical data frames (other than their rownames).

I'd like it to be super fast in both directions :). I think this means O(log(n)) for character direction, and O(1) for integer direction, but I'm not a data-structure/algorithm expert. O(log(n)) in the integer direction is probably OK, but I think O(n) (needs to traverse the whole db solution) in either direction will weigh things down too much.

The db is also bijective. That is, each key maps to exactly one value, and each value maps to exactly one key.

EDIT: Thanks for the posts so far:

Running a few tests, the match technique is definitely slower than a keyed data.table. As Martin pointed out, this is due solely to the time required for match to create the keyed table. That is, both match and a keyed data.table perform a binary search to find the value. But regardless, match is too slow for my needs when returning a single value. So I'll code up a data.table solution and post.

> system.time(match(1,x))
   user  system elapsed 
  0.742   0.054   0.792 
> system.time(match(1,x))
   user  system elapsed 
  0.748   0.064   0.806 
> system.time(match(1e7,x))
   user  system elapsed 
  0.747   0.067   0.808 
> system.time(x.table[1])
   user  system elapsed 
      0       0       0 
> system.time(x.table[1e7])
   user  system elapsed 
  0.001   0.001   0.000 
> system.time(x.table[1e7])
   user  system elapsed 
  0.005   0.000   0.005 
> system.time(x.table[1])
   user  system elapsed 
  0.001   0.000   0.000 
> system.time(x.table[1])
   user  system elapsed 
  0.020   0.001   0.038 


I went with the fmatch solution and a named vector. I liked the simplicity of the match approach, but I'm doing repeated lookups on the db, so the performance hit of recreating the hash table on each call to match was too great.

fmatch has the same interface as match, works on the same named vector data type, etc. It just caches/memoizes the created hash table, so that subsequent calls on the named vector only have to perform the hash lookup. All of this is abstracted from the caller, so fmatch is simply a dropin for match.

Simple wrapper code for the bidirectional lookup:

getChunkHashes = function(chunks, db) {
        return(db[fmatch(chunks, names(db))])

getChunks = function(chunkHashes, db) {
        return(names(db[fmatch(chunkHashes, db)]))
share|improve this question
Might be good to add a note about any performance constraints you may have (ie does it have to be super fast in both directions...?) – joran Oct 8 '12 at 0:17
Perhaps the excellent fastmatch package might help. – Matt Dowle Oct 8 '12 at 8:27
up vote 3 down vote accepted

Given :

The db is also bijective. That is, each key maps to exactly one value, and each value maps to exactly one key.

Then I'd suggest hash solutions (e.g. the hash package), the fastmatch package, or data.table::chmatch. A keyed join in data.table is more intended for ordered multi-column keys, and/or grouped data, which isn't really the problem you have.

share|improve this answer
fmatch worked perfectly – Clayton Stanley Oct 8 '12 at 15:42

A base approach is to use a named vector:

db <- c(hello = 1234, hi = 123, hey = 321)

To go from key(s) to value(s), use [:

db[c("hello", "hey")]
# hello   hey 
#  1234   321

To go from value(s) to key(s) is a little trickier:

names(db)[match(c(321, 123), db)]
# [1] "hey" "hi"

(Note that match(x, y) returns the index of the first match of x in y, so this approach only works well if your map is injective, something you did not make clear in your question.)

If you find that last usage a little too "heavy", you can definitely write your own function.

Note: as pointed out, this approach is potentially slow in the value-to-key direction, so it may not be ideal for repetitive bi-directional access of a large map. For its defense, it is is easy to implement, does not require any package other than base, and will do a very decent job for 99% of people's needs. If nothing, it can be used here as a benchmark against faster alternatives.

share|improve this answer
Thanks, and yes this db is injective. My only concern for the match approach is that I think match has to iterate over every item in the db. Worst case the item is the last one, etc. So O(n) in the integer direction. I'm hoping for something O(log(n)) or O(1) in the integer direction. – Clayton Stanley Oct 8 '12 at 0:55
What if the db was sorted by val on ascending integer. Is there a flag for match to say that this is the case, so that it can use a more efficient algorithm? – Clayton Stanley Oct 8 '12 at 0:56
@claytontstanley I might investigate data.table and environments as hash tables. – joran Oct 8 '12 at 1:20

More of an elaboration on @claytonstanley 's concern about @flodel 's response. match makes a hash of one of it's arguments then searches for the other. The cost is in the creation of the hash rather than the lookup

> n = 1e7; x = seq_len(n)
> system.time(match(1, x))
   user  system elapsed 
  1.156   0.064   1.222 
> system.time(match(n, x))
   user  system elapsed 
  1.152   0.068   1.221 

and it's amortized over the number of look-ups performed

> y = sample(x)
> system.time(match(y, x))
   user  system elapsed 
  2.112   0.052   2.167 

so you definitely want the look-up to be 'vectorized'.

share|improve this answer
Thanks, that's interesting. 1e7 is a rather large choice and the response time not that bad. It would be nice to know a little more about @claytontstanley's usage: what n will be, how many access-es will be needed, can they all be done at the same time, etc. – flodel Oct 8 '12 at 12:00

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