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The method of Lagrange multipliers finds critical points (including maxima and minima) of a differentiable function subject to differentiable constraints.
3
votes
Minimize $f(A,B)$ s.t. $\text{exp}(A)^T \text{exp}(B)=J_K$
I'm posting some work I've done on your problem, this is not a full answer but I think it almost covers it all.
Loss function
$f$, as you wrote it, is linear. This is good enough, but that equation ca …
0
votes
How to solve MNP (minimum norm) problem in SVM?
I guess that if you perform a crisp linear SVM classifier between two groups, one of it being your data and the other being the null vector, either the algorithm will fail because 0 is in the convex h …