# Tagged Questions

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### Finding eigenvectors and eigenvalues of a sparse matrix with ARPACK ( called form PYTHON, MATLAB or as a FORTRAN subroutine)

Few days ago I asked a question how to find the eigenvalues of a large sparse matrix. I got no answers, so I decided to describe a potential solution.
One question remains:
Can I use the python ...

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### How to use numpy in c# [closed]

I want to use numpy in c# for sparse matrix eigenvalue extraction, Is this possible? Is this efficient?
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I have a very large sparse matrix (20000x20000), What's the best way for eigenvalue ...

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203 views

### Memory efficient small eigenvalue algorithms for sparse matrices

I am writing some Java software which requires calculating eigenvalues and eigenvectors of positive definite symmetric sparse matrices. I don't need all of the eigenvalues, but I'm mostly interested ...

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641 views

### The fastest way to calculate eigenvalues of large matrices

Until now I used numpy.linalg.eigvals to calculate the eigenvalues of quadratic matrices with at least 1000 rows/columns and, for most cases, about a fifth of its entries non-zero (I don't know if ...

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1k views

### Computing N smallest eigenvalues of Sparse Matrix in Python

I'd like to find the N smallest eigenvalues of a sparse matrix in Python. I've tried using the scipy.sparse.linalg.eigen.arpack package, but it is very slow at computing the smallest eigenvalues. I ...

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### Eigenvalue decomposition using MATLAB

I'm conducting dimensional reduction of a square matrix A. My issue now is that I have problem computing eigvalue decomposition of a 13000 x 13000 matrix A, i.e. [v d]=eigs(A). Because it's a sparse ...

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### How expensive is it to compute the eigenvalues of a matrix?

How expensive is it to compute the eigenvalues of a matrix?
What is the complexity of the best algorithms?
How long might it take in practice if I have a 1000 x 1000 matrix? I assume it helps if ...