Setup:
I need to store feature vectors associated with string-string pairs. The string-string pairs encode an input-output relationship. There will be a relatively small number of inputs `X`

(e.g. 5), and for each input `x`

, there will be a relatively small number outputs `Y|x`

(e.g. 10).

The question is, what data structure is fastest?

Additional relevant information:

- The outputs are generally different for each input, and it cannot be assumed that each
`X`

has the same number of outputs. - Lookup will be done "many" times (perhaps 1000).
- Inputs will be sampled equally frequently, but for each input, usually one or 2 outputs will be accessed frequently, and the remainder will be accessed infrequently or not at all.

At present, I am considering three possibilities:

*list-of-lists*: access outer list with index (representing input`X[i]`

), access inner list with index (representing output`Y[i][j]`

).*hash-of-hashes*: same as above.*flat hash*:`key = (input,output)`

.

`X`

and`Y`

are observable (possibly correlated) random variables in a modeling problem, then a feature vector would be a pair`[x, y]`

of specific values of`X`

and`Y`

. I don't think this is what you mean. What do you want to keep in this data structure? – phs Mar 9 '13 at 22:53