I'm trying to create an efficient table() calculation (get the frequency of each value in a vector). The difference from the ordinary table() function is that it needs to support adding and removing values without recalculating the whole table.

I thought of using a hash table. for add: look for the key, add 1 to the value. for remove: look for the key. if found: subtract 1 from value, if not found: add new key with value=1.

I was wondering if any of you have other ideas.

Example:

```
X
key freq
1 3
2 5
3 2
8 1
remove(8)
key freq
1 3
2 5
3 2
add(2)
key freq
1 3
2 6
3 2
```

Any ideas for an efficient implementation? Thanks in advance!

--EDIT--

My current code, if anyone is interested (also involves the calculation of shannon entropy)

```
create.freq.hash<-function(x)
{
t<-table(x)
h<-hash(names(t),as.numeric(t));
return(h);
}
freq.hash.add<-function(hash,key)
{
if(is.null(hash[[key]]))
{
.set(hash,key,+1)
}
else
{
.set(hash,key,hash[[key]]+1)
}
}
freq.hash.remove<-function(hash,key)
{
if(!is.null(hash[[key]]))
{
if(hash[[key]]==1)
del(key,hash)
else
.set(hash,key,hash[[key]]-1)
}
}
hash.entropy<-function(hash)
{
if(is.empty(hash))
return;
v<-values(hash);
v.prob<-v/sum(v);
entropy = (-1)*(v.prob%*%log2(v.prob))
return(entropy)
}
```

`hash`

package? There isn't such a function in base R as far as I can tell ... it would be interesting to compare performance between simply using a named integer vector as hadley suggests, and your solution – Ben Bolker Nov 25 '12 at 15:28valuesdo you have? Are they dense or sparse? i.e. if you just put the counts into an integer vector according to their position, what percentage of the vector would be filled? – hadley Nov 26 '12 at 16:38