nalgebra/src/linalg/bidiagonal.rs

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#[cfg(feature = "serde-serialize")]
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use serde::{Deserialize, Serialize};
use alga::general::Complex;
use allocator::Allocator;
use base::{DefaultAllocator, Matrix, MatrixMN, MatrixN, Unit, VectorN};
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use constraint::{DimEq, ShapeConstraint};
use dimension::{Dim, DimDiff, DimMin, DimMinimum, DimSub, Dynamic, U1};
use storage::Storage;
use geometry::Reflection;
use linalg::householder;
/// The bidiagonalization of a general matrix.
#[cfg_attr(feature = "serde-serialize", derive(Serialize, Deserialize))]
#[cfg_attr(
feature = "serde-serialize",
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serde(bound(
serialize = "DimMinimum<R, C>: DimSub<U1>,
DefaultAllocator: Allocator<N, R, C> +
Allocator<N, DimMinimum<R, C>> +
Allocator<N, DimDiff<DimMinimum<R, C>, U1>>,
MatrixMN<N, R, C>: Serialize,
VectorN<N, DimMinimum<R, C>>: Serialize,
VectorN<N, DimDiff<DimMinimum<R, C>, U1>>: Serialize"
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))
)]
#[cfg_attr(
feature = "serde-serialize",
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serde(bound(
deserialize = "DimMinimum<R, C>: DimSub<U1>,
DefaultAllocator: Allocator<N, R, C> +
Allocator<N, DimMinimum<R, C>> +
Allocator<N, DimDiff<DimMinimum<R, C>, U1>>,
MatrixMN<N, R, C>: Deserialize<'de>,
VectorN<N, DimMinimum<R, C>>: Deserialize<'de>,
VectorN<N, DimDiff<DimMinimum<R, C>, U1>>: Deserialize<'de>"
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))
)]
#[derive(Clone, Debug)]
pub struct Bidiagonal<N: Complex, R: DimMin<C>, C: Dim>
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where
DimMinimum<R, C>: DimSub<U1>,
DefaultAllocator: Allocator<N, R, C>
+ Allocator<N, DimMinimum<R, C>>
+ Allocator<N, DimDiff<DimMinimum<R, C>, U1>>,
{
// FIXME: perhaps we should pack the axises into different vectors so that axises for `v_t` are
// contiguous. This prevents some useless copies.
uv: MatrixMN<N, R, C>,
/// The diagonal elements of the decomposed matrix.
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diagonal: VectorN<N, DimMinimum<R, C>>,
/// The off-diagonal elements of the decomposed matrix.
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off_diagonal: VectorN<N, DimDiff<DimMinimum<R, C>, U1>>,
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upper_diagonal: bool,
}
impl<N: Complex, R: DimMin<C>, C: Dim> Copy for Bidiagonal<N, R, C>
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where
DimMinimum<R, C>: DimSub<U1>,
DefaultAllocator: Allocator<N, R, C>
+ Allocator<N, DimMinimum<R, C>>
+ Allocator<N, DimDiff<DimMinimum<R, C>, U1>>,
MatrixMN<N, R, C>: Copy,
VectorN<N, DimMinimum<R, C>>: Copy,
VectorN<N, DimDiff<DimMinimum<R, C>, U1>>: Copy,
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{}
impl<N: Complex, R: DimMin<C>, C: Dim> Bidiagonal<N, R, C>
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where
DimMinimum<R, C>: DimSub<U1>,
DefaultAllocator: Allocator<N, R, C>
+ Allocator<N, C>
+ Allocator<N, R>
+ Allocator<N, DimMinimum<R, C>>
+ Allocator<N, DimDiff<DimMinimum<R, C>, U1>>,
{
/// Computes the Bidiagonal decomposition using householder reflections.
pub fn new(mut matrix: MatrixMN<N, R, C>) -> Self {
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let (nrows, ncols) = matrix.data.shape();
let min_nrows_ncols = nrows.min(ncols);
let dim = min_nrows_ncols.value();
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assert!(
dim != 0,
"Cannot compute the bidiagonalization of an empty matrix."
);
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let mut diagonal = unsafe { MatrixMN::new_uninitialized_generic(min_nrows_ncols, U1) };
let mut off_diagonal =
unsafe { MatrixMN::new_uninitialized_generic(min_nrows_ncols.sub(U1), U1) };
let mut axis_packed = unsafe { MatrixMN::new_uninitialized_generic(ncols, U1) };
let mut work = unsafe { MatrixMN::new_uninitialized_generic(nrows, U1) };
let upper_diagonal = nrows.value() >= ncols.value();
if upper_diagonal {
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for ite in 0..dim - 1 {
householder::clear_column_unchecked(&mut matrix, &mut diagonal[ite], ite, 0, None);
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householder::clear_row_unchecked(
&mut matrix,
&mut off_diagonal[ite],
&mut axis_packed,
&mut work,
ite,
1,
);
}
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householder::clear_column_unchecked(
&mut matrix,
&mut diagonal[dim - 1],
dim - 1,
0,
None,
);
} else {
for ite in 0..dim - 1 {
householder::clear_row_unchecked(
&mut matrix,
&mut diagonal[ite],
&mut axis_packed,
&mut work,
ite,
0,
);
householder::clear_column_unchecked(
&mut matrix,
&mut off_diagonal[ite],
ite,
1,
None,
);
}
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householder::clear_row_unchecked(
&mut matrix,
&mut diagonal[dim - 1],
&mut axis_packed,
&mut work,
dim - 1,
0,
);
}
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Bidiagonal {
uv: matrix,
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diagonal,
off_diagonal,
upper_diagonal,
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}
}
/// Indicates whether this decomposition contains an upper-diagonal matrix.
#[inline]
pub fn is_upper_diagonal(&self) -> bool {
self.upper_diagonal
}
#[inline]
fn axis_shift(&self) -> (usize, usize) {
if self.upper_diagonal {
(0, 1)
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} else {
(1, 0)
}
}
/// Unpacks this decomposition into its three matrix factors `(U, D, V^t)`.
///
/// The decomposed matrix `M` is equal to `U * D * V^t`.
#[inline]
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pub fn unpack(
self,
) -> (
MatrixMN<N, R, DimMinimum<R, C>>,
MatrixN<N, DimMinimum<R, C>>,
MatrixMN<N, DimMinimum<R, C>, C>,
)
where
DefaultAllocator: Allocator<N, DimMinimum<R, C>, DimMinimum<R, C>>
+ Allocator<N, R, DimMinimum<R, C>>
+ Allocator<N, DimMinimum<R, C>, C>,
{
// FIXME: optimize by calling a reallocator.
(self.u(), self.d(), self.v_t())
}
/// Retrieves the upper trapezoidal submatrix `R` of this decomposition.
#[inline]
pub fn d(&self) -> MatrixN<N, DimMinimum<R, C>>
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where
DefaultAllocator: Allocator<N, DimMinimum<R, C>, DimMinimum<R, C>>,
{
let (nrows, ncols) = self.uv.data.shape();
let d = nrows.min(ncols);
let mut res = MatrixN::identity_generic(d, d);
res.set_partial_diagonal(self.diagonal.iter().map(|e| N::from_real(e.modulus())));
let start = self.axis_shift();
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res.slice_mut(start, (d.value() - 1, d.value() - 1))
.set_partial_diagonal(self.off_diagonal.iter().map(|e| N::from_real(e.modulus())));
res
}
/// Computes the orthogonal matrix `U` of this `U * D * V` decomposition.
// FIXME: code duplication with householder::assemble_q.
// Except that we are returning a rectangular matrix here.
pub fn u(&self) -> MatrixMN<N, R, DimMinimum<R, C>>
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where DefaultAllocator: Allocator<N, R, DimMinimum<R, C>> {
let (nrows, ncols) = self.uv.data.shape();
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let mut res = Matrix::identity_generic(nrows, nrows.min(ncols));
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let dim = self.diagonal.len();
let shift = self.axis_shift().0;
for i in (0..dim - shift).rev() {
let axis = self.uv.slice_range(i + shift.., i);
// FIXME: sometimes, the axis might have a zero magnitude.
let refl = Reflection::new(Unit::new_unchecked(axis), N::zero());
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let mut res_rows = res.slice_range_mut(i + shift.., i..);
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let sign = if self.upper_diagonal {
self.diagonal[i].signum()
} else {
self.off_diagonal[i].signum()
};
refl.reflect_with_sign(&mut res_rows, sign);
}
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res
}
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/// Computes the orthogonal matrix `V_t` of this `U * D * V_t` decomposition.
pub fn v_t(&self) -> MatrixMN<N, DimMinimum<R, C>, C>
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where DefaultAllocator: Allocator<N, DimMinimum<R, C>, C> {
let (nrows, ncols) = self.uv.data.shape();
let min_nrows_ncols = nrows.min(ncols);
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let mut res = Matrix::identity_generic(min_nrows_ncols, ncols);
let mut work = unsafe { MatrixMN::new_uninitialized_generic(min_nrows_ncols, U1) };
let mut axis_packed = unsafe { MatrixMN::new_uninitialized_generic(ncols, U1) };
let shift = self.axis_shift().1;
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for i in (0..min_nrows_ncols.value() - shift).rev() {
let axis = self.uv.slice_range(i, i + shift..);
let mut axis_packed = axis_packed.rows_range_mut(i + shift..);
axis_packed.tr_copy_from(&axis);
// FIXME: sometimes, the axis might have a zero magnitude.
let refl = Reflection::new(Unit::new_unchecked(axis_packed), N::zero());
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let mut res_rows = res.slice_range_mut(i.., i + shift..);
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let sign = if self.upper_diagonal {
self.off_diagonal[i].signum()
} else {
self.diagonal[i].signum()
};
refl.reflect_rows_with_sign(&mut res_rows, &mut work.rows_range_mut(i..), sign);
}
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res
}
/// The diagonal part of this decomposed matrix.
pub fn diagonal(&self) -> VectorN<N::Real, DimMinimum<R, C>>
where DefaultAllocator: Allocator<N::Real, DimMinimum<R, C>> {
self.diagonal.map(|e| e.modulus())
}
/// The off-diagonal part of this decomposed matrix.
pub fn off_diagonal(&self) -> VectorN<N::Real, DimDiff<DimMinimum<R, C>, U1>>
where DefaultAllocator: Allocator<N::Real, DimDiff<DimMinimum<R, C>, U1>> {
self.off_diagonal.map(|e| e.modulus())
}
#[doc(hidden)]
pub fn uv_internal(&self) -> &MatrixMN<N, R, C> {
&self.uv
}
}
// impl<N: Complex, D: DimMin<D, Output = D> + DimSub<Dynamic>> Bidiagonal<N, D, D>
// where DefaultAllocator: Allocator<N, D, D> +
// Allocator<N, D> {
// /// Solves the linear system `self * x = b`, where `x` is the unknown to be determined.
// pub fn solve<R2: Dim, C2: Dim, S2>(&self, b: &Matrix<N, R2, C2, S2>) -> MatrixMN<N, R2, C2>
// where S2: StorageMut<N, R2, C2>,
// ShapeConstraint: SameNumberOfRows<R2, D>,
// DefaultAllocator: Allocator<N, R2, C2> {
// let mut res = b.clone_owned();
// self.solve_mut(&mut res);
// res
// }
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//
// /// Solves the linear system `self * x = b`, where `x` is the unknown to be determined.
// pub fn solve_mut<R2: Dim, C2: Dim, S2>(&self, b: &mut Matrix<N, R2, C2, S2>)
// where S2: StorageMut<N, R2, C2>,
// ShapeConstraint: SameNumberOfRows<R2, D> {
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//
// assert_eq!(self.uv.nrows(), b.nrows(), "Bidiagonal solve matrix dimension mismatch.");
// assert!(self.uv.is_square(), "Bidiagonal solve: unable to solve a non-square system.");
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//
// self.q_tr_mul(b);
// self.solve_upper_triangular_mut(b);
// }
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//
// // FIXME: duplicate code from the `solve` module.
// fn solve_upper_triangular_mut<R2: Dim, C2: Dim, S2>(&self, b: &mut Matrix<N, R2, C2, S2>)
// where S2: StorageMut<N, R2, C2>,
// ShapeConstraint: SameNumberOfRows<R2, D> {
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//
// let dim = self.uv.nrows();
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//
// for k in 0 .. b.ncols() {
// let mut b = b.column_mut(k);
// for i in (0 .. dim).rev() {
// let coeff;
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//
// unsafe {
// let diag = *self.diag.vget_unchecked(i);
// coeff = *b.vget_unchecked(i) / diag;
// *b.vget_unchecked_mut(i) = coeff;
// }
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//
// b.rows_range_mut(.. i).axpy(-coeff, &self.uv.slice_range(.. i, i), N::one());
// }
// }
// }
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//
// /// Computes the inverse of the decomposed matrix.
// pub fn inverse(&self) -> MatrixN<N, D> {
// assert!(self.uv.is_square(), "Bidiagonal inverse: unable to compute the inverse of a non-square matrix.");
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//
// // FIXME: is there a less naive method ?
// let (nrows, ncols) = self.uv.data.shape();
// let mut res = MatrixN::identity_generic(nrows, ncols);
// self.solve_mut(&mut res);
// res
// }
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//
// // /// Computes the determinant of the decomposed matrix.
// // pub fn determinant(&self) -> N {
// // let dim = self.uv.nrows();
// // assert!(self.uv.is_square(), "Bidiagonal determinant: unable to compute the determinant of a non-square matrix.");
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//
// // let mut res = N::one();
// // for i in 0 .. dim {
// // res *= unsafe { *self.diag.vget_unchecked(i) };
// // }
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//
// // res self.q_determinant()
// // }
// }
impl<N: Complex, R: DimMin<C>, C: Dim, S: Storage<N, R, C>> Matrix<N, R, C, S>
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where
DimMinimum<R, C>: DimSub<U1>,
DefaultAllocator: Allocator<N, R, C>
+ Allocator<N, C>
+ Allocator<N, R>
+ Allocator<N, DimMinimum<R, C>>
+ Allocator<N, DimDiff<DimMinimum<R, C>, U1>>,
{
/// Computes the bidiagonalization using householder reflections.
pub fn bidiagonalize(self) -> Bidiagonal<N, R, C> {
Bidiagonal::new(self.into_owned())
}
}