L1 Optimization in matlab
3 views (last 30 days)
Show older comments
Gautam Pai
on 15 May 2013
Edited: Walter Roberson
on 21 Mar 2019
Hi guys,
I am trying to solve a slightly modified L1 optimization problem in matlab
argmin_x : |x-d|||^2 + |Fx|||_1
where F is a low rank matrix and d is a given vector. x is the variable to be minimized. Could you suggest the best way to solve this in matlab??
0 Comments
Accepted Answer
Teja Muppirala
on 15 May 2013
Make some d and F just to test it.
d = [1;2;3;4;5];
F = [.1 .3 .5 .7 .9; .2 .4 .6 .8 1.0];
I can think of two ways.
1. Use FMINUNC. This is simple to set up, but for larger problems it will take some time, and you may need to set options such as MaxFunEvals with OPTIMSET to make it work.
V = @(x) norm(x-d)^2+norm(F*x,1);
xopt = fminunc(V,d)
2. Use QUADPROG. This is more complicated to set up, but much faster and more accurate. Create slack variables to deal with the L1 part.
s = size(F,1);
nx = size(F,2);
f = [-2*d; zeros(s,1); ones(s,1)];
H = blkdiag(2*eye(nx),zeros(s),zeros(s));
Aeq = [F -eye(s) -zeros(s)];
beq = zeros(s,1);
A = [zeros(s,nx) eye(s) -eye(s);
zeros(s,nx) -eye(s) -eye(s)];
b = zeros(2*s,1);
[xopt,fval] = quadprog(H,f,A,b,Aeq,beq);
xopt = xopt(1:nx)
Trying it out for d and F given above, I get the same answer either way.
xopt =
0.8500
1.6500
2.4500
3.2500
4.0500
0 Comments
More Answers (1)
Sravan Karrena
on 21 Mar 2019
Edited: Walter Roberson
on 21 Mar 2019
s = size(F,1);
nx = size(F,2);
f = [-2*d; zeros(s,1); ones(s,1)];
H = blkdiag(2*eye(nx),zeros(s),zeros(s));
Aeq = [F -eye(s) -zeros(s)];
beq = zeros(s,1);
A = [zeros(s,nx) eye(s) -eye(s); zeros(s,nx) -eye(s) -eye(s)];
b = zeros(2*s,1);
[xopt,fval] = quadprog(H,f,A,b,Aeq,beq);
xopt = xopt(1:nx)
0 Comments
See Also
Categories
Find more on Nonlinear Optimization in Help Center and File Exchange
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!