norm = $norm; } public function fit(array $samples, ?array $targets = null): void { if ($this->fitted) { return; } if ($this->norm == self::NORM_STD) { $features = range(0, count($samples[0]) - 1); foreach ($features as $i) { $values = array_column($samples, $i); $this->std[$i] = StandardDeviation::population($values); $this->mean[$i] = Mean::arithmetic($values); } } $this->fitted = true; } public function transform(array &$samples): void { $methods = [ self::NORM_L1 => 'normalizeL1', self::NORM_L2 => 'normalizeL2', self::NORM_STD => 'normalizeSTD', ]; $method = $methods[$this->norm]; $this->fit($samples); foreach ($samples as &$sample) { $this->{$method}($sample); } } private function normalizeL1(array &$sample): void { $norm1 = 0; foreach ($sample as $feature) { $norm1 += abs($feature); } if ($norm1 == 0) { $count = count($sample); $sample = array_fill(0, $count, 1.0 / $count); } else { foreach ($sample as &$feature) { $feature /= $norm1; } } } private function normalizeL2(array &$sample): void { $norm2 = 0; foreach ($sample as $feature) { $norm2 += $feature * $feature; } $norm2 = sqrt((float) $norm2); if ($norm2 == 0) { $sample = array_fill(0, count($sample), 1); } else { foreach ($sample as &$feature) { $feature /= $norm2; } } } private function normalizeSTD(array &$sample): void { foreach ($sample as $i => $val) { if ($this->std[$i] != 0) { $sample[$i] = ($sample[$i] - $this->mean[$i]) / $this->std[$i]; } else { // Same value for all samples. $sample[$i] = 0; } } } }