@@ -1,6 +1,6 @@ |
||
1 | 1 | <?php |
2 | 2 | |
3 | -declare(strict_types=1); |
|
3 | +declare(strict_types = 1); |
|
4 | 4 | |
5 | 5 | namespace Phpml\Classification\Ensemble; |
6 | 6 |
@@ -1,6 +1,6 @@ |
||
1 | 1 | <?php |
2 | 2 | |
3 | -declare(strict_types=1); |
|
3 | +declare(strict_types = 1); |
|
4 | 4 | |
5 | 5 | namespace Phpml\Classification\Ensemble; |
6 | 6 |
@@ -1,6 +1,6 @@ discard block |
||
1 | 1 | <?php |
2 | 2 | |
3 | -declare(strict_types=1); |
|
3 | +declare(strict_types = 1); |
|
4 | 4 | |
5 | 5 | namespace Phpml\Classification\Linear; |
6 | 6 | |
@@ -64,7 +64,7 @@ discard block |
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64 | 64 | protected function runTraining(array $samples, array $targets) |
65 | 65 | { |
66 | 66 | // The cost function is the sum of squares |
67 | - $callback = function ($weights, $sample, $target) { |
|
67 | + $callback = function($weights, $sample, $target) { |
|
68 | 68 | $this->weights = $weights; |
69 | 69 | |
70 | 70 | $output = $this->output($sample); |
@@ -1,6 +1,6 @@ discard block |
||
1 | 1 | <?php |
2 | 2 | |
3 | -declare(strict_types=1); |
|
3 | +declare(strict_types = 1); |
|
4 | 4 | |
5 | 5 | namespace Phpml\Classification\Linear; |
6 | 6 | |
@@ -193,7 +193,7 @@ discard block |
||
193 | 193 | * The gradient of the cost function to be used with gradient descent: |
194 | 194 | * ∇J(x) = -(y - h(x)) = (h(x) - y) |
195 | 195 | */ |
196 | - $callback = function ($weights, $sample, $y) use ($penalty) { |
|
196 | + $callback = function($weights, $sample, $y) use ($penalty) { |
|
197 | 197 | $this->weights = $weights; |
198 | 198 | $hX = $this->output($sample); |
199 | 199 | |
@@ -224,7 +224,7 @@ discard block |
||
224 | 224 | * The gradient of the cost function: |
225 | 225 | * ∇J(x) = -(h(x) - y) . h(x) . (1 - h(x)) |
226 | 226 | */ |
227 | - $callback = function ($weights, $sample, $y) use ($penalty) { |
|
227 | + $callback = function($weights, $sample, $y) use ($penalty) { |
|
228 | 228 | $this->weights = $weights; |
229 | 229 | $hX = $this->output($sample); |
230 | 230 |
@@ -256,7 +256,6 @@ |
||
256 | 256 | * |
257 | 257 | * The probability is simply taken as the distance of the sample |
258 | 258 | * to the decision plane. |
259 | - |
|
260 | 259 | * @param mixed $label |
261 | 260 | */ |
262 | 261 | protected function predictProbability(array $sample, $label) : float |
@@ -1,6 +1,6 @@ discard block |
||
1 | 1 | <?php |
2 | 2 | |
3 | -declare(strict_types=1); |
|
3 | +declare(strict_types = 1); |
|
4 | 4 | |
5 | 5 | namespace Phpml\DimensionReduction; |
6 | 6 | |
@@ -146,7 +146,7 @@ discard block |
||
146 | 146 | |
147 | 147 | // Calculate overall mean of the dataset for each column |
148 | 148 | $numElements = array_sum($counts); |
149 | - $map = function ($el) use ($numElements) { |
|
149 | + $map = function($el) use ($numElements) { |
|
150 | 150 | return $el / $numElements; |
151 | 151 | }; |
152 | 152 | $this->overallMean = array_map($map, $overallMean); |
@@ -1,6 +1,6 @@ |
||
1 | 1 | <?php |
2 | 2 | |
3 | -declare(strict_types=1); |
|
3 | +declare(strict_types = 1); |
|
4 | 4 | |
5 | 5 | namespace Phpml\DimensionReduction; |
6 | 6 |
@@ -65,24 +65,24 @@ |
||
65 | 65 | private $V = []; |
66 | 66 | |
67 | 67 | /** |
68 | - * Array for internal storage of nonsymmetric Hessenberg form. |
|
69 | - * |
|
70 | - * @var array |
|
71 | - */ |
|
68 | + * Array for internal storage of nonsymmetric Hessenberg form. |
|
69 | + * |
|
70 | + * @var array |
|
71 | + */ |
|
72 | 72 | private $H = []; |
73 | 73 | |
74 | 74 | /** |
75 | - * Working storage for nonsymmetric algorithm. |
|
76 | - * |
|
77 | - * @var array |
|
78 | - */ |
|
75 | + * Working storage for nonsymmetric algorithm. |
|
76 | + * |
|
77 | + * @var array |
|
78 | + */ |
|
79 | 79 | private $ort; |
80 | 80 | |
81 | 81 | /** |
82 | - * Used for complex scalar division. |
|
83 | - * |
|
84 | - * @var float |
|
85 | - */ |
|
82 | + * Used for complex scalar division. |
|
83 | + * |
|
84 | + * @var float |
|
85 | + */ |
|
86 | 86 | private $cdivr; |
87 | 87 | private $cdivi; |
88 | 88 |
@@ -1,6 +1,6 @@ discard block |
||
1 | 1 | <?php |
2 | 2 | |
3 | -declare(strict_types=1); |
|
3 | +declare(strict_types = 1); |
|
4 | 4 | /** |
5 | 5 | * Class to obtain eigenvalues and eigenvectors of a real matrix. |
6 | 6 | * |
@@ -842,7 +842,7 @@ discard block |
||
842 | 842 | |
843 | 843 | // Always return the eigenvectors of length 1.0 |
844 | 844 | $vectors = new Matrix($vectors); |
845 | - $vectors = array_map(function ($vect) { |
|
845 | + $vectors = array_map(function($vect) { |
|
846 | 846 | $sum = 0; |
847 | 847 | for ($i = 0; $i < count($vect); ++$i) { |
848 | 848 | $sum += $vect[$i] ** 2; |
@@ -1,6 +1,6 @@ |
||
1 | 1 | <?php |
2 | 2 | |
3 | -declare(strict_types=1); |
|
3 | +declare(strict_types = 1); |
|
4 | 4 | |
5 | 5 | namespace Phpml\Math\Statistic; |
6 | 6 |
@@ -1,6 +1,6 @@ |
||
1 | 1 | <?php |
2 | 2 | |
3 | -declare(strict_types=1); |
|
3 | +declare(strict_types = 1); |
|
4 | 4 | |
5 | 5 | namespace Phpml\NeuralNetwork\ActivationFunction; |
6 | 6 |