sparse-linear-algebra
Numerical computation in native Haskell
TravisCI : 
This library provides common numerical analysis functionality, without requiring any external bindings. It is not optimized for performance (yet), but it serves as an experimental platform for scientific computation in a purely functional setting.
Contents :
-
Iterative linear solvers
-
BiConjugate Gradient (bcg
)
-
Conjugate Gradient Squared (cgs
)
-
BiConjugate Gradient Stabilized (bicgstab
) (non-Hermitian systems)
-
Transpose-Free Quasi-Minimal Residual (tfqmr
)
-
Direct linear solvers
-
Matrix factorization algorithms
-
QR (qr
)
-
LU (lu
)
-
Cholesky (chol
)
-
Eigenvalue algorithms
-
Utilities : Vector and matrix norms, matrix condition number, Givens rotation, Householder reflection
-
Predicates : Matrix orthogonality test (A^T A ~= I)
Examples
The module Numeric.LinearAlgebra.Sparse
contains the user interface.
Creation of sparse data
The fromListSM
function creates a sparse matrix from an array of its entries we use :
fromListSM :: Foldable t => (Int, Int) -> t (IxRow, IxCol, a) -> SpMatrix a
e.g.
> amat = fromListSM (3,3) [(0,0,2),(1,0,4),(1,1,3),(1,2,2),(2,2,5)]
and similarly
fromListSV :: Int -> [(Int, a)] -> SpVector a
can be used to create sparse vectors.
Displaying sparse data
Both sparse vectors and matrices can be pretty-printed using prd
:
> prd amat
( 3 rows, 3 columns ) , 5 NZ ( sparsity 0.5555555555555556 )
[2,0,0]
[4,3,2]
[0,0,5]
The zeros are just added at printing time; sparse vectors and matrices should only contain non-zero entries.
Matrix operations
Matrix factorizations are available as lu
and qr
respectively, and are straightforward to verify by using the matrix product ##
:
> (l, u) = lu amat
> prd $ l ## u
( 3 rows, 3 columns ) , 9 NZ ( sparsity 1.0 )
[2.0,0.0,0.0]
[4.0,3.0,2.0]
[0.0,0.0,5.0]
Notice that the result is dense, i.e. certain entries are numerically zero but have been inserted into the result along with all the others (thus taking up memory!).
To preserve sparsity, we can use a sparsifying matrix-matrix product #~#
, which filters out all the elements x for which |x| <= eps
, where eps
(defined in Numeric.Eps
) depends on the numerical type used (e.g. it is 10^-6 for Float
s and 10^-12 for Double
s).
> prd $ l #~# u
( 3 rows, 3 columns ) , 5 NZ ( sparsity 0.5555555555555556 )
[2.0,0.0,0.0]
[4.0,3.0,2.0]
[0.0,0.0,5.0]
Linear systems
Large sparse linear systems are best solved with iterative methods. sparse-linear-algebra
provides a selection of these via the linSolve
function, or alternatively <\>
(which uses BiCGSTAB as default) :
> b = fromListSV 3 [(0,3),(1,2),(2,5)]
> x = amat <\> b
> prd x
( 3 elements ) , 3 NZ ( sparsity 1.0 )
[1.4999999999999998,-1.9999999999999998,0.9999999999999998]
The result can be verified by computing the matrix-vector action amat #> x
, which should (ideally) be very close to the right-hand side b
:
> prd $ amat #> x
( 3 elements ) , 3 NZ ( sparsity 1.0 )
[2.9999999999999996,1.9999999999999996,4.999999999999999]
The library also provides a forward-backward substitution solver (luSolve
) based on a triangular factorization of the system matrix (usually LU). This should be the preferred for solving smaller, dense systems. Using the data defined above we can cross-verify the two solution methods:
> x' = luSolve l u b
> prd x'
( 3 elements ) , 3 NZ ( sparsity 1.0 )
[1.5,-2.0,1.0]
This is also an experiment in principled scientific programming :
-
set the stage by declaring typeclasses and some useful generic operations (normed linear vector spaces, i.e. finite-dimensional spaces equipped with an inner product that induces a distance function),
-
define appropriate data structures, and how they relate to those properties (sparse vectors and matrices, defined internally via Data.IntMap
, are made instances of the VectorSpace and Additive classes respectively). This allows to decouple the algorithms from the actual implementation of the backend,
-
implement the algorithms, following 1:1 the textbook [1]
License
GPL3, see LICENSE
Credits
Inspired by
References
[1] : Y. Saad, Iterative Methods for Sparse Linear Systems, 2nd ed., 2000