# Lazy Correlation Matrix Computation in F#

I have to compute the correlation matrix on vectors contained in a csv file of 5GB. Each row contains one observation for each random variable. To do this I wrote the following:

``````let getCorrMatrix data =

let getMatrixInfo nCol (count,crossProd:float array array,sumVector:float array,sqVector:float array) (newLine:float array)   =

for i in 0..(nCol-1) do
sumVector.[i]<-sumVector.[i]+newLine.[i]
sqVector.[i]<-sqVector.[i]+(newLine.[i]*newLine.[i])
for j in (i+1)..(nCol-1)  do
crossProd.[i].[j-(i+1)]<-crossProd.[i].[j-(i+1)]+newLine.[i]*newLine.[j]

let newCount = count+1
//(newCount,newMatrix,newSumVector,newSqVector)
(newCount,crossProd,sumVector,sqVector)

//Get number of columns

//Initialize objects for the fold
let matrixStart = Array.init nCol (fun i -> Array.create (nCol-i-1) 0.0)
let sumVector = Array.init nCol (fun _ -> 0.0)
let sqVector = Array.init nCol (fun _ -> 0.0)

let init = (0,matrixStart,sumVector,sqVector)

//Run the fold and obtain all the elements to build te correlation matrix
let (count,crossProd,sum,sq) =
data
|>PSeq.fold(getMatrixInfo nCol) init

//Compute averages standard deviations, and finally correlations
let averages = sum|>Array.map(fun s ->s/(float count))
let std = Array.zip3 sum sq averages
|> Array.map(fun (elemSum,elemSq,av)-> let temp = elemSq-2.0*av*elemSum+float(count)*av*av
sqrt (temp/(float count-1.0)))

//Map allteh elements to correlation
let rec getCorr i j =
if i=j then
1.0
elif i<j then
(crossProd.[i].[j-(i+1)]-averages.[i]*sum.[j]-averages.[j]*sum.[i]+(float count*averages.[i]*averages.[j]) )/((float count-1.0)*std.[i]*std.[j])
else
getCorr j i

let corrMatrix =  Array2D.init nCol nCol (fun i j -> getCorr i j)

corrMatrix
``````

I have tested it against R computation and it matches. Since I plan to use this again and again if you have some feedback (or spot a mistake) it would be greatly appreciated. (Note I post this because thought it might be useful to others too).

Thanks

-

The major problem is in the following code:

``````    //Update crossproduct
let newMatrix =
[| for i in 0..(nCol-1) do
yield [| for j in (i+1)..(nCol-1)  -> crossProd.[i].[j-(i+1)]+newLine.[i]*newLine.[j] |]
|]
``````

You create a new matrix for each row in your `data`. This is inefficient, you can use only one such matrix.

There are some minor F# to note:

1. Use `sqrt` as a shortcut for `System.Math.Sqrt`.

2. Avoid using list comprehension to initialize simple arrays. E.g. your code

``````let matrixStart = [| for i in 0..(nCol-1) do
yield [| for j in (i+1)..(nCol-1)  ->  0.0 |]
|]
``````

could be be written using standard procedures:

``````let matrixStart = Array.init nCol (fun i -> Array.create (nCol-i-1) 0.0)
``````

another example, for

``````let corrMatrix =
[| for i in 0..(nCol-1) do
yield [| for j in 0..(nCol-1)  -> getCorr i j |]
|]
``````

instead of using `float [][]` you can use `float [,]` and write

``````let corrMatrix = Array2D.init nCol nCol (fun i j -> getCorr i j)
``````
-
Thanks code runs much faster ! (Just discovered your website, very cool !) – jlezard Oct 2 '10 at 12:53
and `fun i j -> getCorr i j` can just be `getCorr`. :-) – Jon Harrop Oct 2 '10 at 18:54