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Operations research, linear programming, control theory, systems theory, optimal control, game theory
2
votes
How to derive the Levenberg–Marquardt algorithm with matrix calculus
This is very possibly a homework exercise, so I won't provide a complete solution. The computation of the gradient of $\| y-f(\beta)-J\delta \|^{2}$ simply isn't correct.
If $y$ is a vector of siz …
2
votes
An algorithm for finding the closest point to a fixed point.
Since you haven't assumed anything about the distribution of points in S, any algorithm for this problem must examine all $n$ points, and thus take $\Omega(n)$ time. The straight forward algorithm th …
1
vote
Accepted
constructing a positive definite basis
If $M$ is a symmetric and positive definite matrix of size $n$ by $n$, then the range of $M$ is $R^{n}$. Unless $A^{T}$ also has $R^{n}$ as its range, you can't make this happen.
You'd have a much …
1
vote
optimization related to sdp
I'll assume in my answer that you're using the convention that the primal problem is:
$\max tr(CX) $
subject to
$tr(A_{i}X)=b_{i}\;\; i=1, 2, ..., m$
$X \succeq 0$
where $X$ is an $n$ by $n$ sym …
1
vote
generalization from linear programming solution
You should look into the topic of "parameteric linear programming". In certain situations where the problem data vary linearly with parameters, you can derive formulas for the optimal solution and op …
1
vote
Optimal knot placement for fitting piecewise-continuous linear functions to a nonlinear func...
Do you really want to solve this problem, or do you just want to get a good approximation to the function? I would bet that your overall goal is actually to get a fast and reasonably accurate approxi …
3
votes
Least sum squares given constraints on subcomponents
As a practical matter, a lot depends on $n$ and the dimension of $x$. If the problem is small enough then you might not be in deep trouble. If the problem is large (e.g. $x$ might have thousands of …
1
vote
Problems finding feasible points with respect to linear matrix inequalty constraints
There are a number of widely used primal--dual interior point codes for SDP, including SeDuMi, SDPA, SDPT3, and CSDP. Of these, SeDuMi approaches this problem by using the self dual embedding, while …
1
vote
Schur complement and "negative definite"!
No, that's not quite the generalization that you'll get when you extend the Schur complement theorem for positive definite matrices to negative definite matrices. Try using the fact that a matrix $X$ …
3
votes
Accepted
definition of "exact neighborhood" [optimization]
It's important that you understand the definition of a neighborhood used in this book. This is definition 1.3 on page 7. $N$ is not a set but rather a function that maps a solution to the problem to …
5
votes
Projected gradient descent for non-convex optimization problems
First, I'm assuming that your nonconvex feasible set $D$ is a subset of some larger convex set $C$ on which the objective function $f(x)$ is defined. It doesn't really make sense to talk about $f(x)$ …
3
votes
Accepted
Maximizing the minimum of piecewise linear functions in high dimensional space
As in your previous question, this is a nonconvex optimization problem, so it won't be LP, SOCP, or SDP representable.
You've only got a 21 dimensional problem, and the constraint functions have ea …
6
votes
Accepted
Optimizing a quadratic restricted to the sphere
Your problem has been studied extensively in the context of trust region methods for optimization, and there are a number of algorithms that have been developed.
See for example:
W. W. Hager, Mini …
2
votes
Robust black box function minimization with extremely expensive cost function
You haven't said so explicitly, but it sounds as though your function evaluations may also be noisy in that the function value is the result of a Monte Carlo simulation that incorporates random number …
2
votes
How do I approach Optimal Control?
It might help to understand what background you already have. Have you taken any courses in ordinary differential equations? partial differential equations? real analysis? What mathematics courses h …