I have the following Sparse Filtering MATLAB code that I would like to port to F#. I am aware of F# Type Provider for MATLAB but can't use it here because it would create a dependency on MATLAB (I can use it for testing)

```
function [optW] = SparseFiltering(N, X);
% N = # features to learn, X = input data (examples in column)
% You should pre-process X by removing the DC component per example,
% before calling this function.
% e.g., X = bsxfun(@minus, X, mean(X));
addpath minFunc/ % Add path to minFunc optimization package
optW = randn(N, size(X, 1));
optW = minFunc(@SparseFilteringObj, optW(:), struct('MaxIter', 100), X, N);
optW = reshape(optW, [N, size(X, 1)]);
end
function [Obj, DeltaW] = SparseFilteringObj (W, X, N)
% Reshape W into matrix form
W = reshape(W, [N, size(X,1)]);
% Feed Forward
F = W*X; % Linear Activation
Fs = sqrt(F.ˆ2 + 1e-8); % Soft-Absolute Activation
[NFs, L2Fs] = l2row(Fs); % Normalize by Rows
[Fhat, L2Fn] = l2row(NFs'); % Normalize by Columns
% Compute Objective Function
Obj = sum(sum(Fhat, 2), 1);
% Backprop through each feedforward step
DeltaW = l2grad(NFs', Fhat, L2Fn, ones(size(Fhat)));
DeltaW = l2grad(Fs, NFs, L2Fs, DeltaW');
DeltaW = (DeltaW .* (F ./ Fs)) * X';
DeltaW = DeltaW(:);
end
function [Y,N] = l2row(X) % L2 Normalize X by rows
% We also use this to normalize by column with l2row(X')
N = sqrt(sum(X.ˆ2,2) + 1e-8);
Y = bsxfun(@rdivide,X,N);
end
function [G] = l2grad(X,Y,N,D) % Backpropagate through Normalization
G = bsxfun(@rdivide, D, N) - bsxfun(@times, Y, sum(D.*X, 2) ./ (N.ˆ2));
end
```

I understand most of the MATLAB code, but I'm not sure what the equivalent of MATLAB's `minFunc`

is in .Net. I believe I want one of the `Microsoft.SolverFoundation.Solvers`

. According to MATLAB's site

...the default parameters of minFunc call a quasi-Newton strategy, where limited-memory BFGS updates with Shanno-Phua scaling are used in computing the step direction, and a bracketing line-search for a point satisfying the strong Wolfe conditions is used to compute the step direction. In the line search, (safeguarded) cubic interpolation is used to generate trial values, and the method switches to an Armijo back-tracking line search on iterations where the objective function enters a region where the parameters do not produce a real valued output

Given the above information, can anyone confirm that the Microsoft.SolverFoundation.Solvers.CompactQuasiNewtonModel is the right way to go?

Also, are there any other obvious "gotchas" when porting the above code to F#? (new to this type of port)