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Numerical algorithms for problems in analysis and algebra, scientific computation
6
votes
Accepted
How to solve a system of linear equations without storing the matrix?
This looks like a situation where the Kaczmarz method could work.
What you do to maintain an approximate solution and then project cyclically onto the hyperplanes which are given by the $k$-th equati …
7
votes
What is an extragradient method?
I can confirm that there is no agreement of what "extragradient method" really means. I know the interpretation by Christian Clason but I also know the one that is linked in Carlo Beenakkers answer. L …
1
vote
How to handle the evaluation of functions on staggered ghost nodes?
Evaluation out of bounds is related to boundary conditions. Doesn't the boundary treatment for $C$ already indicate a way to handle the coefficients? If not, I would use some way that extends the coef …
1
vote
Reference Request: Variational Problem
A bit long for a comment.
Let's clean up the formulation a bit:
First, the domain $[-1,1]^2$ of definition does play any role, and hence, we assume that all respective quantities are functions on s …
5
votes
Numerical approximation to the Wasserstein metric?
Yes, there are. First note that the Wasserstein metric is, after discretization, the solution of a linear program (LP) that can be fed into any LP solver.
Moreover, there are specialized algorithms, …
4
votes
How to project a vector onto a very large, non-orthogonal subspace
It makes a considerable difference if you need to project a vector just once or repeatedly inside some loop of another algorithm. If you would be in the latter case than it would be indeed a good idea …
2
votes
dense lattices in high dimensions
You face the curse of dimensionality. Besides the pretty old but simple and robust Monte Carlo integration and its relatives there are also methods based on sparse grids. For an overview see
E. No …
4
votes
Accepted
Smoothing L1 norm, Huber vs Conjugate
Following the suggestion of András Bátkai I post my comment as an answer:
Smoothing the dual or the primal problem are quite different things: Smoothing the dual will not give you a smooth primal. Ho …
1
vote
Kronecker-structured matrix kernel
Not an answer but too many equations for a comment: $\newcommand{\vec}{\mathrm{vec}}$
To compute an element $v\in\mathbb{R}^{3n^2}$ of the kernel of
$$M = \begin{bmatrix} A\otimes I\\\\ I\otimes B\en …
3
votes
Accepted
Adding constraints as penalty with $\| \cdot \|_0$ norm
The claim in the paper is false.
Since the problem is not convex, the claim does not follow from general results. However, there are some results in this direction in quite general cases:
If $x^*$ i …
3
votes
Discrete gradient on point clouds
Certainly, there is not a standard method - and be aware that the calculation will be sensitive to noise.
A straightforward of calculating the gradient would be: Take some point $x$ and choose a numb …
4
votes
Discretizing a cosine function?
You have discovered the alias effect!
For the discrete Fourier transform all this is worked out in detail - for the discrete Hartley transform, I don't know...
1
vote
Orthogonal system of functions ordered by norm of second derivative
The optimization problem for $f_3$ is
$$
\min_g \int_{-1}^1 |g''(x)|^2dx \quad \text{s.t.}\quad \int_{-1}^1 g(x)dx = 0,\ \int_{-1}^1 x g(x)dx = 0,\ \int_{-1}^1 |g(x)|^2dx = 1.
$$
Using Lagrange Multip …
1
vote
Linear convergence rate of proximal point algorithm
I am not aware of results on the linear rate of this variant of the proximal point method. Let me note that convergence is usually shown by the following observation: Since $C$ is a bijection, you may …
1
vote
Selecting Rays for Simulated Radon Transform
Sorry, not an answer, but too long for a comment.
If your question is motivated by practical applications of the Radon transform such as computerized tomography in medical imaging or non-destructive …