How to optimize the multiplication of large matrices in Matlab?

9 visualizzazioni (ultimi 30 giorni)
I have 2 matrices A, B, and vector C that I need to multiply. They are fairly large.
Matrix A = 10000x10000
Matrix B = 10000x10000
Vector C = 10000x1
If I perform A*B*C, this takes a long time so I used sparse function which collapses the matrices/vectors by removing large number of zeros then I convert it back to a full matrix.
full(sparse(A)*sparse(B)*sparse(C))
It's faster but I was wondering if there are more efficient techniques for multiplying them together. Would it be better to write for loops?
Secondly, some of the elements in my matrix have values close to zero so I can replace these with zeroes before converting them to sparse matrices. What's the best way to do this?

Risposta accettata

James Tursa
James Tursa il 8 Mar 2013
Force the matrix-vector multipy to happen first. E.g.,
A*(B*C)

Più risposte (2)

Sean de Wolski
Sean de Wolski il 8 Mar 2013
I doubt you'll be able to get anything faster than the highly optimized BLAS libraries that MATLAB uses to perform matrix arithmetic. The only thing I've heard of that might be faster is mtimesx on the FEX and even that, I've never reproduced.

per isakson
per isakson il 8 Mar 2013
Modificato: per isakson il 8 Mar 2013
Your second question:
A( A < small_number ) = 0;
or better
A( abs(A) < small_number ) = 0;
  2 Commenti
John
John il 8 Mar 2013
Modificato: John il 8 Mar 2013
Thanks, does the abs(A) make it faster or more efficient?

Accedi per commentare.

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!

Translated by