The tag has no wiki summary.

learn more… | top users | synonyms

0
votes
0answers
36 views

Calculation of the sub gradient of the first norm of a matrix

Lets say I have a matrix X and its first norm $||X||_1$. How do I calculate the subgradient of this norm with respect to matrix X itself.
2
votes
0answers
44 views

Nonlinear optimization of constraint parameter - subdifferential?

Disclaimer: I discovered that the FAQ suggests to post research-level to mathoverflow instead of math.stackexchange. I "moved" the question accordingly, cp. post at mathoverflow. Sorry for the ...
6
votes
0answers
102 views

Subgradient of convex minimization duality

$$\min(f_0(x))$$ $$\text{s.t. }f_i(x) \le y_i \forall i, i = 1 ,\ldots, m$$ $$f_i : \text{convex};\quad x : \text{variable}$$ It is also considered that $g(y)$ is the optimal value of the problem ...
1
vote
0answers
114 views

Gradient Descent for Primal Kernel SVM with Soft-Margin(Hinge) Loss

Given the primal objective $$F({\bf a})=L\sum_{i,j}a_{i}a_{j}k(x_i,x_j) + \sum_{i}max(0, 1-y_i \sum_{j}a_jk(x_i,x_j)$$ for the soft margin SVM, where ${\bf a}=(a_1,...,a_N)$, N being the number of ...
1
vote
1answer
29 views

Why is the set of subgradients a convex set?

I'm struggling to understand an example we were given. The problem description is: Let $f$ be a convex function in $E^n$. Prove that the set of subgradients of $f$ in a given point form a ... convex ...
2
votes
1answer
83 views

Mathematical applications of the subgradient

Do you know mathematical results which can be nicely proved using subgradient? For example, Jensen's inequilaty can be proved like that: Let $\varphi : \mathbb{R}^n \to \mathbb{R}$ be a convex ...
0
votes
0answers
61 views

Explain $x^*$ of subgradient in KKT -conditions: primal optima or dual optima?

I asked this question here but I noticed that this notation $x^*$ may actually mean two things: primal optimality and dual optimality. Please, explain this notation particularly here: I understand ...