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  • Bug fixes for general core bugs in 3.10.x will end 8 November 2021 (12 months).
  • Bug fixes for security issues in 3.10.x will end 9 May 2022 (18 months).
  • PHP version: minimum PHP 7.2.0 Note: minimum PHP version has increased since Moodle 3.8. PHP 7.3.x and 7.4.x are supported too.
<?php

namespace PhpOffice\PhpSpreadsheet\Shared\JAMA;

/**
 *    Class to obtain eigenvalues and eigenvectors of a real matrix.
 *
 *    If A is symmetric, then A = V*D*V' where the eigenvalue matrix D
 *    is diagonal and the eigenvector matrix V is orthogonal (i.e.
 *    A = V.times(D.times(V.transpose())) and V.times(V.transpose())
 *    equals the identity matrix).
 *
 *    If A is not symmetric, then the eigenvalue matrix D is block diagonal
 *    with the real eigenvalues in 1-by-1 blocks and any complex eigenvalues,
 *    lambda + i*mu, in 2-by-2 blocks, [lambda, mu; -mu, lambda].  The
 *    columns of V represent the eigenvectors in the sense that A*V = V*D,
 *    i.e. A.times(V) equals V.times(D).  The matrix V may be badly
 *    conditioned, or even singular, so the validity of the equation
 *    A = V*D*inverse(V) depends upon V.cond().
 *
 *    @author  Paul Meagher
 *
 *    @version 1.1
 */
class EigenvalueDecomposition
{
    /**
     * Row and column dimension (square matrix).
     *
     * @var int
     */
    private $n;

    /**
     * Arrays for internal storage of eigenvalues.
     *
     * @var array
     */
    private $d = [];

    private $e = [];

    /**
     * Array for internal storage of eigenvectors.
     *
     * @var array
     */
    private $V = [];

    /**
     * Array for internal storage of nonsymmetric Hessenberg form.
     *
     * @var array
     */
    private $H = [];

    /**
     * Working storage for nonsymmetric algorithm.
     *
     * @var array
     */
    private $ort;

    /**
     * Used for complex scalar division.
     *
     * @var float
     */
    private $cdivr;

    private $cdivi;

    /**
> * @var array * Symmetric Householder reduction to tridiagonal form. > */ */ > private $A; private function tred2() > { > /**
< private function tred2()
> private function tred2(): void
// Bowdler, Martin, Reinsch, and Wilkinson, Handbook for // Auto. Comp., Vol.ii-Linear Algebra, and the corresponding // Fortran subroutine in EISPACK. $this->d = $this->V[$this->n - 1];
> $j = 0;
// Householder reduction to tridiagonal form. for ($i = $this->n - 1; $i > 0; --$i) { $i_ = $i - 1; // Scale to avoid under/overflow. $h = $scale = 0.0; $scale += array_sum(array_map('abs', $this->d)); if ($scale == 0.0) { $this->e[$i] = $this->d[$i_]; $this->d = array_slice($this->V[$i_], 0, $i_); for ($j = 0; $j < $i; ++$j) { $this->V[$j][$i] = $this->V[$i][$j] = 0.0; } } else { // Generate Householder vector. for ($k = 0; $k < $i; ++$k) { $this->d[$k] /= $scale;
< $h += pow($this->d[$k], 2);
> $h += $this->d[$k] ** 2;
} $f = $this->d[$i_]; $g = sqrt($h); if ($f > 0) { $g = -$g; } $this->e[$i] = $scale * $g; $h = $h - $f * $g; $this->d[$i_] = $f - $g; for ($j = 0; $j < $i; ++$j) { $this->e[$j] = 0.0; } // Apply similarity transformation to remaining columns. for ($j = 0; $j < $i; ++$j) { $f = $this->d[$j]; $this->V[$j][$i] = $f; $g = $this->e[$j] + $this->V[$j][$j] * $f; for ($k = $j + 1; $k <= $i_; ++$k) { $g += $this->V[$k][$j] * $this->d[$k]; $this->e[$k] += $this->V[$k][$j] * $f; } $this->e[$j] = $g; } $f = 0.0; for ($j = 0; $j < $i; ++$j) { $this->e[$j] /= $h; $f += $this->e[$j] * $this->d[$j]; } $hh = $f / (2 * $h); for ($j = 0; $j < $i; ++$j) { $this->e[$j] -= $hh * $this->d[$j]; } for ($j = 0; $j < $i; ++$j) { $f = $this->d[$j]; $g = $this->e[$j]; for ($k = $j; $k <= $i_; ++$k) { $this->V[$k][$j] -= ($f * $this->e[$k] + $g * $this->d[$k]); } $this->d[$j] = $this->V[$i - 1][$j]; $this->V[$i][$j] = 0.0; } } $this->d[$i] = $h; } // Accumulate transformations. for ($i = 0; $i < $this->n - 1; ++$i) { $this->V[$this->n - 1][$i] = $this->V[$i][$i]; $this->V[$i][$i] = 1.0; $h = $this->d[$i + 1]; if ($h != 0.0) { for ($k = 0; $k <= $i; ++$k) { $this->d[$k] = $this->V[$k][$i + 1] / $h; } for ($j = 0; $j <= $i; ++$j) { $g = 0.0; for ($k = 0; $k <= $i; ++$k) { $g += $this->V[$k][$i + 1] * $this->V[$k][$j]; } for ($k = 0; $k <= $i; ++$k) { $this->V[$k][$j] -= $g * $this->d[$k]; } } } for ($k = 0; $k <= $i; ++$k) { $this->V[$k][$i + 1] = 0.0; } } $this->d = $this->V[$this->n - 1]; $this->V[$this->n - 1] = array_fill(0, $j, 0.0); $this->V[$this->n - 1][$this->n - 1] = 1.0; $this->e[0] = 0.0; } /** * Symmetric tridiagonal QL algorithm. * * This is derived from the Algol procedures tql2, by * Bowdler, Martin, Reinsch, and Wilkinson, Handbook for * Auto. Comp., Vol.ii-Linear Algebra, and the corresponding * Fortran subroutine in EISPACK. */
< private function tql2()
> private function tql2(): void
{ for ($i = 1; $i < $this->n; ++$i) { $this->e[$i - 1] = $this->e[$i]; } $this->e[$this->n - 1] = 0.0; $f = 0.0; $tst1 = 0.0;
< $eps = pow(2.0, -52.0);
> $eps = 2.0 ** (-52.0);
for ($l = 0; $l < $this->n; ++$l) { // Find small subdiagonal element $tst1 = max($tst1, abs($this->d[$l]) + abs($this->e[$l])); $m = $l; while ($m < $this->n) { if (abs($this->e[$m]) <= $eps * $tst1) { break; } ++$m; } // If m == l, $this->d[l] is an eigenvalue, // otherwise, iterate. if ($m > $l) { $iter = 0; do { // Could check iteration count here.
< $iter += 1;
> ++$iter;
// Compute implicit shift $g = $this->d[$l]; $p = ($this->d[$l + 1] - $g) / (2.0 * $this->e[$l]); $r = hypo($p, 1.0); if ($p < 0) { $r *= -1; } $this->d[$l] = $this->e[$l] / ($p + $r); $this->d[$l + 1] = $this->e[$l] * ($p + $r); $dl1 = $this->d[$l + 1]; $h = $g - $this->d[$l]; for ($i = $l + 2; $i < $this->n; ++$i) { $this->d[$i] -= $h; } $f += $h; // Implicit QL transformation. $p = $this->d[$m]; $c = 1.0; $c2 = $c3 = $c; $el1 = $this->e[$l + 1]; $s = $s2 = 0.0; for ($i = $m - 1; $i >= $l; --$i) { $c3 = $c2; $c2 = $c; $s2 = $s; $g = $c * $this->e[$i]; $h = $c * $p; $r = hypo($p, $this->e[$i]); $this->e[$i + 1] = $s * $r; $s = $this->e[$i] / $r; $c = $p / $r; $p = $c * $this->d[$i] - $s * $g; $this->d[$i + 1] = $h + $s * ($c * $g + $s * $this->d[$i]); // Accumulate transformation. for ($k = 0; $k < $this->n; ++$k) { $h = $this->V[$k][$i + 1]; $this->V[$k][$i + 1] = $s * $this->V[$k][$i] + $c * $h; $this->V[$k][$i] = $c * $this->V[$k][$i] - $s * $h; } } $p = -$s * $s2 * $c3 * $el1 * $this->e[$l] / $dl1; $this->e[$l] = $s * $p; $this->d[$l] = $c * $p; // Check for convergence. } while (abs($this->e[$l]) > $eps * $tst1); } $this->d[$l] = $this->d[$l] + $f; $this->e[$l] = 0.0; } // Sort eigenvalues and corresponding vectors. for ($i = 0; $i < $this->n - 1; ++$i) { $k = $i; $p = $this->d[$i]; for ($j = $i + 1; $j < $this->n; ++$j) { if ($this->d[$j] < $p) { $k = $j; $p = $this->d[$j]; } } if ($k != $i) { $this->d[$k] = $this->d[$i]; $this->d[$i] = $p; for ($j = 0; $j < $this->n; ++$j) { $p = $this->V[$j][$i]; $this->V[$j][$i] = $this->V[$j][$k]; $this->V[$j][$k] = $p; } } } } /** * Nonsymmetric reduction to Hessenberg form. * * This is derived from the Algol procedures orthes and ortran, * by Martin and Wilkinson, Handbook for Auto. Comp., * Vol.ii-Linear Algebra, and the corresponding * Fortran subroutines in EISPACK. */
< private function orthes()
> private function orthes(): void
{ $low = 0; $high = $this->n - 1; for ($m = $low + 1; $m <= $high - 1; ++$m) { // Scale column. $scale = 0.0; for ($i = $m; $i <= $high; ++$i) { $scale = $scale + abs($this->H[$i][$m - 1]); } if ($scale != 0.0) { // Compute Householder transformation. $h = 0.0; for ($i = $high; $i >= $m; --$i) { $this->ort[$i] = $this->H[$i][$m - 1] / $scale; $h += $this->ort[$i] * $this->ort[$i]; } $g = sqrt($h); if ($this->ort[$m] > 0) { $g *= -1; } $h -= $this->ort[$m] * $g; $this->ort[$m] -= $g; // Apply Householder similarity transformation // H = (I -u * u' / h) * H * (I -u * u') / h) for ($j = $m; $j < $this->n; ++$j) { $f = 0.0; for ($i = $high; $i >= $m; --$i) { $f += $this->ort[$i] * $this->H[$i][$j]; } $f /= $h; for ($i = $m; $i <= $high; ++$i) { $this->H[$i][$j] -= $f * $this->ort[$i]; } } for ($i = 0; $i <= $high; ++$i) { $f = 0.0; for ($j = $high; $j >= $m; --$j) { $f += $this->ort[$j] * $this->H[$i][$j]; } $f = $f / $h; for ($j = $m; $j <= $high; ++$j) { $this->H[$i][$j] -= $f * $this->ort[$j]; } } $this->ort[$m] = $scale * $this->ort[$m]; $this->H[$m][$m - 1] = $scale * $g; } } // Accumulate transformations (Algol's ortran). for ($i = 0; $i < $this->n; ++$i) { for ($j = 0; $j < $this->n; ++$j) { $this->V[$i][$j] = ($i == $j ? 1.0 : 0.0); } } for ($m = $high - 1; $m >= $low + 1; --$m) { if ($this->H[$m][$m - 1] != 0.0) { for ($i = $m + 1; $i <= $high; ++$i) { $this->ort[$i] = $this->H[$i][$m - 1]; } for ($j = $m; $j <= $high; ++$j) { $g = 0.0; for ($i = $m; $i <= $high; ++$i) { $g += $this->ort[$i] * $this->V[$i][$j]; } // Double division avoids possible underflow $g = ($g / $this->ort[$m]) / $this->H[$m][$m - 1]; for ($i = $m; $i <= $high; ++$i) { $this->V[$i][$j] += $g * $this->ort[$i]; } } } } } /** * Performs complex division. * * @param mixed $xr * @param mixed $xi * @param mixed $yr * @param mixed $yi */
< private function cdiv($xr, $xi, $yr, $yi)
> private function cdiv($xr, $xi, $yr, $yi): void
{ if (abs($yr) > abs($yi)) { $r = $yi / $yr; $d = $yr + $r * $yi; $this->cdivr = ($xr + $r * $xi) / $d; $this->cdivi = ($xi - $r * $xr) / $d; } else { $r = $yr / $yi; $d = $yi + $r * $yr; $this->cdivr = ($r * $xr + $xi) / $d; $this->cdivi = ($r * $xi - $xr) / $d; } } /** * Nonsymmetric reduction from Hessenberg to real Schur form. * * Code is derived from the Algol procedure hqr2, * by Martin and Wilkinson, Handbook for Auto. Comp., * Vol.ii-Linear Algebra, and the corresponding * Fortran subroutine in EISPACK. */
< private function hqr2()
> private function hqr2(): void
{ // Initialize $nn = $this->n; $n = $nn - 1; $low = 0; $high = $nn - 1;
< $eps = pow(2.0, -52.0);
> $eps = 2.0 ** (-52.0);
$exshift = 0.0; $p = $q = $r = $s = $z = 0; // Store roots isolated by balanc and compute matrix norm $norm = 0.0; for ($i = 0; $i < $nn; ++$i) {
< if (($i < $low) or ($i > $high)) {
> if (($i < $low) || ($i > $high)) {
$this->d[$i] = $this->H[$i][$i]; $this->e[$i] = 0.0; } for ($j = max($i - 1, 0); $j < $nn; ++$j) { $norm = $norm + abs($this->H[$i][$j]); } } // Outer loop over eigenvalue index $iter = 0; while ($n >= $low) { // Look for single small sub-diagonal element $l = $n; while ($l > $low) { $s = abs($this->H[$l - 1][$l - 1]) + abs($this->H[$l][$l]); if ($s == 0.0) { $s = $norm; } if (abs($this->H[$l][$l - 1]) < $eps * $s) { break; } --$l; } // Check for convergence // One root found if ($l == $n) { $this->H[$n][$n] = $this->H[$n][$n] + $exshift; $this->d[$n] = $this->H[$n][$n]; $this->e[$n] = 0.0; --$n; $iter = 0; // Two roots found } elseif ($l == $n - 1) { $w = $this->H[$n][$n - 1] * $this->H[$n - 1][$n]; $p = ($this->H[$n - 1][$n - 1] - $this->H[$n][$n]) / 2.0; $q = $p * $p + $w; $z = sqrt(abs($q)); $this->H[$n][$n] = $this->H[$n][$n] + $exshift; $this->H[$n - 1][$n - 1] = $this->H[$n - 1][$n - 1] + $exshift; $x = $this->H[$n][$n]; // Real pair if ($q >= 0) { if ($p >= 0) { $z = $p + $z; } else { $z = $p - $z; } $this->d[$n - 1] = $x + $z; $this->d[$n] = $this->d[$n - 1]; if ($z != 0.0) { $this->d[$n] = $x - $w / $z; } $this->e[$n - 1] = 0.0; $this->e[$n] = 0.0; $x = $this->H[$n][$n - 1]; $s = abs($x) + abs($z); $p = $x / $s; $q = $z / $s; $r = sqrt($p * $p + $q * $q); $p = $p / $r; $q = $q / $r; // Row modification for ($j = $n - 1; $j < $nn; ++$j) { $z = $this->H[$n - 1][$j]; $this->H[$n - 1][$j] = $q * $z + $p * $this->H[$n][$j]; $this->H[$n][$j] = $q * $this->H[$n][$j] - $p * $z; } // Column modification for ($i = 0; $i <= $n; ++$i) { $z = $this->H[$i][$n - 1]; $this->H[$i][$n - 1] = $q * $z + $p * $this->H[$i][$n]; $this->H[$i][$n] = $q * $this->H[$i][$n] - $p * $z; } // Accumulate transformations for ($i = $low; $i <= $high; ++$i) { $z = $this->V[$i][$n - 1]; $this->V[$i][$n - 1] = $q * $z + $p * $this->V[$i][$n]; $this->V[$i][$n] = $q * $this->V[$i][$n] - $p * $z; } // Complex pair } else { $this->d[$n - 1] = $x + $p; $this->d[$n] = $x + $p; $this->e[$n - 1] = $z; $this->e[$n] = -$z; } $n = $n - 2; $iter = 0; // No convergence yet } else { // Form shift $x = $this->H[$n][$n]; $y = 0.0; $w = 0.0; if ($l < $n) { $y = $this->H[$n - 1][$n - 1]; $w = $this->H[$n][$n - 1] * $this->H[$n - 1][$n]; } // Wilkinson's original ad hoc shift if ($iter == 10) { $exshift += $x; for ($i = $low; $i <= $n; ++$i) { $this->H[$i][$i] -= $x; } $s = abs($this->H[$n][$n - 1]) + abs($this->H[$n - 1][$n - 2]); $x = $y = 0.75 * $s; $w = -0.4375 * $s * $s; } // MATLAB's new ad hoc shift if ($iter == 30) { $s = ($y - $x) / 2.0; $s = $s * $s + $w; if ($s > 0) { $s = sqrt($s); if ($y < $x) { $s = -$s; } $s = $x - $w / (($y - $x) / 2.0 + $s); for ($i = $low; $i <= $n; ++$i) { $this->H[$i][$i] -= $s; } $exshift += $s; $x = $y = $w = 0.964; } } // Could check iteration count here. $iter = $iter + 1; // Look for two consecutive small sub-diagonal elements $m = $n - 2; while ($m >= $l) { $z = $this->H[$m][$m]; $r = $x - $z; $s = $y - $z; $p = ($r * $s - $w) / $this->H[$m + 1][$m] + $this->H[$m][$m + 1]; $q = $this->H[$m + 1][$m + 1] - $z - $r - $s; $r = $this->H[$m + 2][$m + 1]; $s = abs($p) + abs($q) + abs($r); $p = $p / $s; $q = $q / $s; $r = $r / $s; if ($m == $l) { break; }
< if (abs($this->H[$m][$m - 1]) * (abs($q) + abs($r)) < < $eps * (abs($p) * (abs($this->H[$m - 1][$m - 1]) + abs($z) + abs($this->H[$m + 1][$m + 1])))) {
> if ( > abs($this->H[$m][$m - 1]) * (abs($q) + abs($r)) < > $eps * (abs($p) * (abs($this->H[$m - 1][$m - 1]) + abs($z) + abs($this->H[$m + 1][$m + 1]))) > ) {
break; } --$m; } for ($i = $m + 2; $i <= $n; ++$i) { $this->H[$i][$i - 2] = 0.0; if ($i > $m + 2) { $this->H[$i][$i - 3] = 0.0; } } // Double QR step involving rows l:n and columns m:n for ($k = $m; $k <= $n - 1; ++$k) { $notlast = ($k != $n - 1); if ($k != $m) { $p = $this->H[$k][$k - 1]; $q = $this->H[$k + 1][$k - 1]; $r = ($notlast ? $this->H[$k + 2][$k - 1] : 0.0); $x = abs($p) + abs($q) + abs($r); if ($x != 0.0) { $p = $p / $x; $q = $q / $x; $r = $r / $x; } } if ($x == 0.0) { break; } $s = sqrt($p * $p + $q * $q + $r * $r); if ($p < 0) { $s = -$s; } if ($s != 0) { if ($k != $m) { $this->H[$k][$k - 1] = -$s * $x; } elseif ($l != $m) { $this->H[$k][$k - 1] = -$this->H[$k][$k - 1]; } $p = $p + $s; $x = $p / $s; $y = $q / $s; $z = $r / $s; $q = $q / $p; $r = $r / $p; // Row modification for ($j = $k; $j < $nn; ++$j) { $p = $this->H[$k][$j] + $q * $this->H[$k + 1][$j]; if ($notlast) { $p = $p + $r * $this->H[$k + 2][$j]; $this->H[$k + 2][$j] = $this->H[$k + 2][$j] - $p * $z; } $this->H[$k][$j] = $this->H[$k][$j] - $p * $x; $this->H[$k + 1][$j] = $this->H[$k + 1][$j] - $p * $y; } // Column modification $iMax = min($n, $k + 3); for ($i = 0; $i <= $iMax; ++$i) { $p = $x * $this->H[$i][$k] + $y * $this->H[$i][$k + 1]; if ($notlast) { $p = $p + $z * $this->H[$i][$k + 2]; $this->H[$i][$k + 2] = $this->H[$i][$k + 2] - $p * $r; } $this->H[$i][$k] = $this->H[$i][$k] - $p; $this->H[$i][$k + 1] = $this->H[$i][$k + 1] - $p * $q; } // Accumulate transformations for ($i = $low; $i <= $high; ++$i) { $p = $x * $this->V[$i][$k] + $y * $this->V[$i][$k + 1]; if ($notlast) { $p = $p + $z * $this->V[$i][$k + 2]; $this->V[$i][$k + 2] = $this->V[$i][$k + 2] - $p * $r; } $this->V[$i][$k] = $this->V[$i][$k] - $p; $this->V[$i][$k + 1] = $this->V[$i][$k + 1] - $p * $q; } } // ($s != 0) } // k loop } // check convergence } // while ($n >= $low) // Backsubstitute to find vectors of upper triangular form if ($norm == 0.0) { return; } for ($n = $nn - 1; $n >= 0; --$n) { $p = $this->d[$n]; $q = $this->e[$n]; // Real vector if ($q == 0) { $l = $n; $this->H[$n][$n] = 1.0; for ($i = $n - 1; $i >= 0; --$i) { $w = $this->H[$i][$i] - $p; $r = 0.0; for ($j = $l; $j <= $n; ++$j) { $r = $r + $this->H[$i][$j] * $this->H[$j][$n]; } if ($this->e[$i] < 0.0) { $z = $w; $s = $r; } else { $l = $i; if ($this->e[$i] == 0.0) { if ($w != 0.0) { $this->H[$i][$n] = -$r / $w; } else { $this->H[$i][$n] = -$r / ($eps * $norm); } // Solve real equations } else { $x = $this->H[$i][$i + 1]; $y = $this->H[$i + 1][$i]; $q = ($this->d[$i] - $p) * ($this->d[$i] - $p) + $this->e[$i] * $this->e[$i]; $t = ($x * $s - $z * $r) / $q; $this->H[$i][$n] = $t; if (abs($x) > abs($z)) { $this->H[$i + 1][$n] = (-$r - $w * $t) / $x; } else { $this->H[$i + 1][$n] = (-$s - $y * $t) / $z; } } // Overflow control $t = abs($this->H[$i][$n]); if (($eps * $t) * $t > 1) { for ($j = $i; $j <= $n; ++$j) { $this->H[$j][$n] = $this->H[$j][$n] / $t; } } } } // Complex vector } elseif ($q < 0) { $l = $n - 1; // Last vector component imaginary so matrix is triangular if (abs($this->H[$n][$n - 1]) > abs($this->H[$n - 1][$n])) { $this->H[$n - 1][$n - 1] = $q / $this->H[$n][$n - 1]; $this->H[$n - 1][$n] = -($this->H[$n][$n] - $p) / $this->H[$n][$n - 1]; } else { $this->cdiv(0.0, -$this->H[$n - 1][$n], $this->H[$n - 1][$n - 1] - $p, $q); $this->H[$n - 1][$n - 1] = $this->cdivr; $this->H[$n - 1][$n] = $this->cdivi; } $this->H[$n][$n - 1] = 0.0; $this->H[$n][$n] = 1.0; for ($i = $n - 2; $i >= 0; --$i) { // double ra,sa,vr,vi; $ra = 0.0; $sa = 0.0; for ($j = $l; $j <= $n; ++$j) { $ra = $ra + $this->H[$i][$j] * $this->H[$j][$n - 1]; $sa = $sa + $this->H[$i][$j] * $this->H[$j][$n]; } $w = $this->H[$i][$i] - $p; if ($this->e[$i] < 0.0) { $z = $w; $r = $ra; $s = $sa; } else { $l = $i; if ($this->e[$i] == 0) { $this->cdiv(-$ra, -$sa, $w, $q); $this->H[$i][$n - 1] = $this->cdivr; $this->H[$i][$n] = $this->cdivi; } else { // Solve complex equations $x = $this->H[$i][$i + 1]; $y = $this->H[$i + 1][$i]; $vr = ($this->d[$i] - $p) * ($this->d[$i] - $p) + $this->e[$i] * $this->e[$i] - $q * $q; $vi = ($this->d[$i] - $p) * 2.0 * $q; if ($vr == 0.0 & $vi == 0.0) { $vr = $eps * $norm * (abs($w) + abs($q) + abs($x) + abs($y) + abs($z)); } $this->cdiv($x * $r - $z * $ra + $q * $sa, $x * $s - $z * $sa - $q * $ra, $vr, $vi); $this->H[$i][$n - 1] = $this->cdivr; $this->H[$i][$n] = $this->cdivi; if (abs($x) > (abs($z) + abs($q))) { $this->H[$i + 1][$n - 1] = (-$ra - $w * $this->H[$i][$n - 1] + $q * $this->H[$i][$n]) / $x; $this->H[$i + 1][$n] = (-$sa - $w * $this->H[$i][$n] - $q * $this->H[$i][$n - 1]) / $x; } else { $this->cdiv(-$r - $y * $this->H[$i][$n - 1], -$s - $y * $this->H[$i][$n], $z, $q); $this->H[$i + 1][$n - 1] = $this->cdivr; $this->H[$i + 1][$n] = $this->cdivi; } } // Overflow control $t = max(abs($this->H[$i][$n - 1]), abs($this->H[$i][$n])); if (($eps * $t) * $t > 1) { for ($j = $i; $j <= $n; ++$j) { $this->H[$j][$n - 1] = $this->H[$j][$n - 1] / $t; $this->H[$j][$n] = $this->H[$j][$n] / $t; } } } // end else } // end for } // end else for complex case } // end for // Vectors of isolated roots for ($i = 0; $i < $nn; ++$i) { if ($i < $low | $i > $high) { for ($j = $i; $j < $nn; ++$j) { $this->V[$i][$j] = $this->H[$i][$j]; } } } // Back transformation to get eigenvectors of original matrix for ($j = $nn - 1; $j >= $low; --$j) { for ($i = $low; $i <= $high; ++$i) { $z = 0.0; $kMax = min($j, $high); for ($k = $low; $k <= $kMax; ++$k) { $z = $z + $this->V[$i][$k] * $this->H[$k][$j]; } $this->V[$i][$j] = $z; } } } // end hqr2 /** * Constructor: Check for symmetry, then construct the eigenvalue decomposition. *
< * @param mixed $Arg A Square matrix
> * @param Matrix $Arg A Square matrix
*/
< public function __construct($Arg)
> public function __construct(Matrix $Arg)
{ $this->A = $Arg->getArray(); $this->n = $Arg->getColumnDimension(); $issymmetric = true; for ($j = 0; ($j < $this->n) & $issymmetric; ++$j) { for ($i = 0; ($i < $this->n) & $issymmetric; ++$i) { $issymmetric = ($this->A[$i][$j] == $this->A[$j][$i]); } } if ($issymmetric) { $this->V = $this->A; // Tridiagonalize. $this->tred2(); // Diagonalize. $this->tql2(); } else { $this->H = $this->A; $this->ort = []; // Reduce to Hessenberg form. $this->orthes(); // Reduce Hessenberg to real Schur form. $this->hqr2(); } } /** * Return the eigenvector matrix. * * @return Matrix V */ public function getV() { return new Matrix($this->V, $this->n, $this->n); } /** * Return the real parts of the eigenvalues. * * @return array real(diag(D)) */ public function getRealEigenvalues() { return $this->d; } /** * Return the imaginary parts of the eigenvalues. * * @return array imag(diag(D)) */ public function getImagEigenvalues() { return $this->e; } /** * Return the block diagonal eigenvalue matrix. * * @return Matrix D */ public function getD() {
> $D = [];
for ($i = 0; $i < $this->n; ++$i) { $D[$i] = array_fill(0, $this->n, 0.0); $D[$i][$i] = $this->d[$i]; if ($this->e[$i] == 0) { continue; } $o = ($this->e[$i] > 0) ? $i + 1 : $i - 1; $D[$i][$o] = $this->e[$i]; } return new Matrix($D); } }