k3s/vendor/gonum.org/v1/gonum/mat/hogsvd.go

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2019-08-30 18:33:25 +00:00
// Copyright ©2017 The Gonum Authors. All rights reserved.
// Use of this source code is governed by a BSD-style
// license that can be found in the LICENSE file.
package mat
import (
"errors"
"gonum.org/v1/gonum/blas/blas64"
)
// HOGSVD is a type for creating and using the Higher Order Generalized Singular Value
// Decomposition (HOGSVD) of a set of matrices.
//
// The factorization is a linear transformation of the data sets from the given
// variable×sample spaces to reduced and diagonalized "eigenvariable"×"eigensample"
// spaces.
type HOGSVD struct {
n int
v *Dense
b []Dense
err error
}
// succFact returns whether the receiver contains a successful factorization.
func (gsvd *HOGSVD) succFact() bool {
return gsvd.n != 0
}
// Factorize computes the higher order generalized singular value decomposition (HOGSVD)
// of the n input r_i×c column tall matrices in m. HOGSV extends the GSVD case from 2 to n
// input matrices.
//
// M_0 = U_0 * Σ_0 * V^T
// M_1 = U_1 * Σ_1 * V^T
// .
// .
// .
// M_{n-1} = U_{n-1} * Σ_{n-1} * V^T
//
// where U_i are r_i×c matrices of singular vectors, Σ are c×c matrices singular values, and V
// is a c×c matrix of singular vectors.
//
// Factorize returns whether the decomposition succeeded. If the decomposition
// failed, routines that require a successful factorization will panic.
func (gsvd *HOGSVD) Factorize(m ...Matrix) (ok bool) {
// Factorize performs the HOGSVD factorisation
// essentially as described by Ponnapalli et al.
// https://doi.org/10.1371/journal.pone.0028072
if len(m) < 2 {
panic("hogsvd: too few matrices")
}
gsvd.n = 0
r, c := m[0].Dims()
a := make([]Cholesky, len(m))
var ts SymDense
for i, d := range m {
rd, cd := d.Dims()
if rd < cd {
gsvd.err = ErrShape
return false
}
if rd > r {
r = rd
}
if cd != c {
panic(ErrShape)
}
ts.Reset()
ts.SymOuterK(1, d.T())
ok = a[i].Factorize(&ts)
if !ok {
gsvd.err = errors.New("hogsvd: cholesky decomposition failed")
return false
}
}
s := getWorkspace(c, c, true)
defer putWorkspace(s)
sij := getWorkspace(c, c, false)
defer putWorkspace(sij)
for i, ai := range a {
for _, aj := range a[i+1:] {
gsvd.err = ai.SolveCholTo(sij, &aj)
if gsvd.err != nil {
return false
}
s.Add(s, sij)
gsvd.err = aj.SolveCholTo(sij, &ai)
if gsvd.err != nil {
return false
}
s.Add(s, sij)
}
}
s.Scale(1/float64(len(m)*(len(m)-1)), s)
var eig Eigen
ok = eig.Factorize(s.T(), EigenRight)
if !ok {
gsvd.err = errors.New("hogsvd: eigen decomposition failed")
return false
}
vc := eig.VectorsTo(nil)
// vc is guaranteed to have real eigenvalues.
rc, cc := vc.Dims()
v := NewDense(rc, cc, nil)
for i := 0; i < rc; i++ {
for j := 0; j < cc; j++ {
a := vc.At(i, j)
v.set(i, j, real(a))
}
}
// Rescale the columns of v by their Frobenius norms.
// Work done in cv is reflected in v.
var cv VecDense
for j := 0; j < c; j++ {
cv.ColViewOf(v, j)
cv.ScaleVec(1/blas64.Nrm2(cv.mat), &cv)
}
b := make([]Dense, len(m))
biT := getWorkspace(c, r, false)
defer putWorkspace(biT)
for i, d := range m {
// All calls to reset will leave a zeroed
// matrix with capacity to store the result
// without additional allocation.
biT.Reset()
gsvd.err = biT.Solve(v, d.T())
if gsvd.err != nil {
return false
}
b[i].Clone(biT.T())
}
gsvd.n = len(m)
gsvd.v = v
gsvd.b = b
return true
}
// Err returns the reason for a factorization failure.
func (gsvd *HOGSVD) Err() error {
return gsvd.err
}
// Len returns the number of matrices that have been factorized. If Len returns
// zero, the factorization was not successful.
func (gsvd *HOGSVD) Len() int {
return gsvd.n
}
// UTo extracts the matrix U_n from the singular value decomposition, storing
// the result in-place into dst. U_n is size r×c.
// If dst is nil, a new matrix is allocated. The resulting U matrix is returned.
//
// UTo will panic if the receiver does not contain a successful factorization.
func (gsvd *HOGSVD) UTo(dst *Dense, n int) *Dense {
if !gsvd.succFact() {
panic(badFact)
}
if n < 0 || gsvd.n <= n {
panic("hogsvd: invalid index")
}
if dst == nil {
r, c := gsvd.b[n].Dims()
dst = NewDense(r, c, nil)
} else {
dst.reuseAs(gsvd.b[n].Dims())
}
dst.Copy(&gsvd.b[n])
var v VecDense
for j, f := range gsvd.Values(nil, n) {
v.ColViewOf(dst, j)
v.ScaleVec(1/f, &v)
}
return dst
}
// Values returns the nth set of singular values of the factorized system.
// If the input slice is non-nil, the values will be stored in-place into the slice.
// In this case, the slice must have length c, and Values will panic with
// matrix.ErrSliceLengthMismatch otherwise. If the input slice is nil,
// a new slice of the appropriate length will be allocated and returned.
//
// Values will panic if the receiver does not contain a successful factorization.
func (gsvd *HOGSVD) Values(s []float64, n int) []float64 {
if !gsvd.succFact() {
panic(badFact)
}
if n < 0 || gsvd.n <= n {
panic("hogsvd: invalid index")
}
_, c := gsvd.b[n].Dims()
if s == nil {
s = make([]float64, c)
} else if len(s) != c {
panic(ErrSliceLengthMismatch)
}
var v VecDense
for j := 0; j < c; j++ {
v.ColViewOf(&gsvd.b[n], j)
s[j] = blas64.Nrm2(v.mat)
}
return s
}
// VTo extracts the matrix V from the singular value decomposition, storing
// the result in-place into dst. V is size c×c.
// If dst is nil, a new matrix is allocated. The resulting V matrix is returned.
//
// VTo will panic if the receiver does not contain a successful factorization.
func (gsvd *HOGSVD) VTo(dst *Dense) *Dense {
if !gsvd.succFact() {
panic(badFact)
}
if dst == nil {
r, c := gsvd.v.Dims()
dst = NewDense(r, c, nil)
} else {
dst.reuseAs(gsvd.v.Dims())
}
dst.Copy(gsvd.v)
return dst
}