php-ml/src/Math/Matrix.php

328 lines
7.8 KiB
PHP
Raw Normal View History

<?php
2016-04-29 22:59:10 +00:00
2016-11-20 21:53:17 +00:00
declare(strict_types=1);
namespace Phpml\Math;
use Phpml\Exception\InvalidArgumentException;
use Phpml\Exception\MatrixException;
use Phpml\Math\LinearAlgebra\LUDecomposition;
class Matrix
{
/**
* @var array
*/
private $matrix = [];
/**
* @var int
*/
private $rows;
/**
* @var int
*/
private $columns;
/**
* @var float
*/
private $determinant;
/**
* @throws InvalidArgumentException
*/
public function __construct(array $matrix, bool $validate = true)
{
// When a row vector is given
if (!is_array($matrix[0])) {
$this->rows = 1;
$this->columns = count($matrix);
$matrix = [$matrix];
} else {
$this->rows = count($matrix);
$this->columns = count($matrix[0]);
}
2016-04-29 22:59:10 +00:00
if ($validate) {
for ($i = 0; $i < $this->rows; ++$i) {
if (count($matrix[$i]) !== $this->columns) {
throw new InvalidArgumentException('Matrix dimensions did not match');
}
}
}
$this->matrix = $matrix;
}
public static function fromFlatArray(array $array): self
2016-04-30 11:54:01 +00:00
{
$matrix = [];
foreach ($array as $value) {
$matrix[] = [$value];
}
return new self($matrix);
}
public function toArray(): array
{
return $this->matrix;
}
public function toScalar(): float
{
return $this->matrix[0][0];
}
public function getRows(): int
{
return $this->rows;
}
public function getColumns(): int
{
return $this->columns;
}
/**
* @throws MatrixException
*/
2018-10-28 06:44:52 +00:00
public function getColumnValues(int $column): array
{
2016-04-29 22:59:10 +00:00
if ($column >= $this->columns) {
throw new MatrixException('Column out of range');
}
return array_column($this->matrix, $column);
}
/**
* @return float|int
2016-11-20 21:53:17 +00:00
*
* @throws MatrixException
*/
public function getDeterminant()
{
if ($this->determinant !== null) {
return $this->determinant;
}
if (!$this->isSquare()) {
throw new MatrixException('Matrix is not square matrix');
}
$lu = new LUDecomposition($this);
return $this->determinant = $lu->det();
}
public function isSquare(): bool
{
return $this->columns === $this->rows;
}
public function transpose(): self
{
2018-10-28 06:44:52 +00:00
if ($this->rows === 1) {
$matrix = array_map(function ($el) {
return [$el];
}, $this->matrix[0]);
} else {
$matrix = array_map(null, ...$this->matrix);
}
return new self($matrix, false);
}
public function multiply(self $matrix): self
{
2018-10-28 06:44:52 +00:00
if ($this->columns !== $matrix->getRows()) {
throw new InvalidArgumentException('Inconsistent matrix supplied');
}
$array1 = $this->toArray();
$array2 = $matrix->toArray();
$colCount = $matrix->columns;
/*
- To speed-up multiplication, we need to avoid use of array index operator [ ] as much as possible( See #255 for details)
- A combination of "foreach" and "array_column" works much faster then accessing the array via index operator
*/
$product = [];
foreach ($array1 as $row => $rowData) {
for ($col = 0; $col < $colCount; ++$col) {
$columnData = array_column($array2, $col);
$sum = 0;
foreach ($rowData as $key => $valueData) {
$sum += $valueData * $columnData[$key];
}
$product[$row][$col] = $sum;
}
}
2016-04-29 22:59:10 +00:00
return new self($product, false);
}
2018-10-28 06:44:52 +00:00
/**
* @param float|int $value
*/
public function divideByScalar($value): self
{
2017-01-31 19:33:08 +00:00
$newMatrix = [];
2016-04-29 22:59:10 +00:00
for ($i = 0; $i < $this->rows; ++$i) {
for ($j = 0; $j < $this->columns; ++$j) {
$newMatrix[$i][$j] = $this->matrix[$i][$j] / $value;
}
}
return new self($newMatrix, false);
}
2018-10-28 06:44:52 +00:00
/**
* @param float|int $value
*/
public function multiplyByScalar($value): self
{
$newMatrix = [];
for ($i = 0; $i < $this->rows; ++$i) {
for ($j = 0; $j < $this->columns; ++$j) {
$newMatrix[$i][$j] = $this->matrix[$i][$j] * $value;
}
}
return new self($newMatrix, false);
}
/**
* Element-wise addition of the matrix with another one
*/
public function add(self $other): self
{
return $this->sum($other);
}
/**
* Element-wise subtracting of another matrix from this one
*/
public function subtract(self $other): self
{
return $this->sum($other, -1);
}
public function inverse(): self
{
if (!$this->isSquare()) {
throw new MatrixException('Matrix is not square matrix');
}
$LU = new LUDecomposition($this);
$identity = $this->getIdentity();
$inverse = $LU->solve($identity);
return new self($inverse, false);
}
public function crossOut(int $row, int $column): self
{
$newMatrix = [];
$r = 0;
2016-04-29 22:59:10 +00:00
for ($i = 0; $i < $this->rows; ++$i) {
$c = 0;
if ($row != $i) {
2016-04-29 22:59:10 +00:00
for ($j = 0; $j < $this->columns; ++$j) {
if ($column != $j) {
$newMatrix[$r][$c] = $this->matrix[$i][$j];
2016-04-29 22:59:10 +00:00
++$c;
}
}
2016-04-29 22:59:10 +00:00
++$r;
}
}
return new self($newMatrix, false);
}
public function isSingular(): bool
{
return $this->getDeterminant() == 0;
}
/**
* Frobenius norm (HilbertSchmidt norm, Euclidean norm) (‖A‖F)
* Square root of the sum of the square of all elements.
*
* https://en.wikipedia.org/wiki/Matrix_norm#Frobenius_norm
*
* _____________
* /
* ‖A‖F = Σ Σ |aᵢⱼ|²
* ᵢ₌₁ ᵢ₌₁
*/
public function frobeniusNorm(): float
{
$squareSum = 0;
for ($i = 0; $i < $this->rows; ++$i) {
for ($j = 0; $j < $this->columns; ++$j) {
$squareSum += $this->matrix[$i][$j] ** 2;
}
}
return $squareSum ** .5;
}
/**
* Returns the transpose of given array
*/
public static function transposeArray(array $array): array
{
return (new self($array, false))->transpose()->toArray();
}
/**
* Returns the dot product of two arrays<br>
* Matrix::dot(x, y) ==> x.y'
*/
public static function dot(array $array1, array $array2): array
{
$m1 = new self($array1, false);
$m2 = new self($array2, false);
return $m1->multiply($m2->transpose())->toArray()[0];
}
/**
* Element-wise addition or substraction depending on the given sign parameter
*/
private function sum(self $other, int $sign = 1): self
{
$a1 = $this->toArray();
$a2 = $other->toArray();
$newMatrix = [];
for ($i = 0; $i < $this->rows; ++$i) {
for ($k = 0; $k < $this->columns; ++$k) {
$newMatrix[$i][$k] = $a1[$i][$k] + $sign * $a2[$i][$k];
}
}
return new self($newMatrix, false);
}
/**
* Returns diagonal identity matrix of the same size of this matrix
*/
private function getIdentity(): self
{
$array = array_fill(0, $this->rows, array_fill(0, $this->columns, 0));
for ($i = 0; $i < $this->rows; ++$i) {
$array[$i][$i] = 1;
}
return new self($array, false);
}
}