2010-08-28 22:05:41 -04:00
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<?php
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/**
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* Computes Gaussian values.
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*
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* PHP version 5
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*
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* @category Math
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* @package PHPSkills
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* @author Jeff Moser <jeff@moserware.com>
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* @copyright 2010 Jeff Moser
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*/
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namespace Moserware\Numerics;
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require_once(dirname(__FILE__) . "/basicmath.php");
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class GaussianDistribution
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{
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private $_mean;
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private $_standardDeviation;
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// Precision and PrecisionMean are used because they make multiplying and dividing simpler
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// (the the accompanying math paper for more details)
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private $_precision;
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private $_precisionMean;
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private $_variance;
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function __construct($mean = 0.0, $standardDeviation = 1.0)
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{
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$this->_mean = $mean;
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$this->_standardDeviation = $standardDeviation;
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$this->_variance = square($standardDeviation);
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$this->_precision = 1.0/$this->_variance;
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$this->_precisionMean = $this->_precision*$this->_mean;
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}
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public function getMean()
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{
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return $this->_mean;
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}
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public function getVariance()
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{
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return $this->_variance;
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}
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public function getStandardDeviation()
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{
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return $this->_standardDeviation;
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}
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2010-09-18 11:11:44 -04:00
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public function getPrecision()
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{
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return $this->_precision;
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}
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public function getPrecisionMean()
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{
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return $this->_precisionMean;
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}
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2010-08-28 22:05:41 -04:00
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public function getNormalizationConstant()
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{
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// Great derivation of this is at http://www.astro.psu.edu/~mce/A451_2/A451/downloads/notes0.pdf
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return 1.0/(sqrt(2*M_PI)*$this->_standardDeviation);
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}
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public function __clone()
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{
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$result = new GaussianDistribution();
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$result->_mean = $this->_mean;
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$result->_standardDeviation = $this->_standardDeviation;
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$result->_variance = $this->_variance;
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$result->_precision = $this->_precision;
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$result->_precisionMean = $this->_precisionMean;
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return $result;
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}
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public static function fromPrecisionMean($precisionMean, $precision)
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{
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$result = new GaussianDistribution();
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$result->_precision = $precision;
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$result->_precisionMean = $precisionMean;
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$result->_variance = 1.0/$precision;
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$result->_standardDeviation = sqrt($result->_variance);
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$result->_mean = $result->_precisionMean/$result->_precision;
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return $result;
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}
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// For details, see http://www.tina-vision.net/tina-knoppix/tina-memo/2003-003.pdf
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// for multiplication, the precision mean ones are easier to write :)
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public static function multiply(GaussianDistribution $left, GaussianDistribution $right)
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{
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return GaussianDistribution::fromPrecisionMean($left->_precisionMean + $right->_precisionMean, $left->_precision + $right->_precision);
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}
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// Computes the absolute difference between two Gaussians
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public static function absoluteDifference(GaussianDistribution $left, GaussianDistribution $right)
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{
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return max(
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abs($left->_precisionMean - $right->_precisionMean),
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sqrt(abs($left->_precision - $right->_precision)));
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}
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// Computes the absolute difference between two Gaussians
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public static function subtract(GaussianDistribution $left, GaussianDistribution $right)
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{
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return absoluteDifference($left, $right);
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}
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public static function logProductNormalization(GaussianDistribution $left, GaussianDistribution $right)
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{
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if (($left->_precision == 0) || ($right->_precision == 0))
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{
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return 0;
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}
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$varianceSum = $left->_variance + $right->_variance;
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$meanDifference = $left->_mean - $right->_mean;
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$logSqrt2Pi = log(sqrt(2*M_PI));
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return -$logSqrt2Pi - (log($varianceSum)/2.0) - (square($meanDifference)/(2.0*$varianceSum));
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}
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public static function divide(GaussianDistribution $numerator, GaussianDistribution $denominator)
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{
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return GaussianDistribution::fromPrecisionMean($numerator->_precisionMean - $denominator->_precisionMean,
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$numerator->_precision - $denominator->_precision);
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}
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public static function logRatioNormalization(GaussianDistribution $numerator, GaussianDistribution $denominator)
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{
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if (($numerator->_precision == 0) || ($denominator->_precision == 0))
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{
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return 0;
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}
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$varianceDifference = $denominator->_variance - $numerator->_variance;
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$meanDifference = $numerator->_mean - $denominator->_mean;
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$logSqrt2Pi = log(sqrt(2*M_PI));
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return log($denominator->_variance) + $logSqrt2Pi - log($varianceDifference)/2.0 +
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square($meanDifference)/(2*$varianceDifference);
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}
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public static function at($x, $mean = 0.0, $standardDeviation = 1.0)
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{
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// See http://mathworld.wolfram.com/NormalDistribution.html
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// 1 -(x-mean)^2 / (2*stdDev^2)
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// P(x) = ------------------- * e
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// stdDev * sqrt(2*pi)
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$multiplier = 1.0/($standardDeviation*sqrt(2*M_PI));
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$expPart = exp((-1.0*square($x - $mean))/(2*square($standardDeviation)));
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$result = $multiplier*$expPart;
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return $result;
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}
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public static function cumulativeTo($x, $mean = 0.0, $standardDeviation = 1.0)
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{
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$invsqrt2 = -0.707106781186547524400844362104;
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$result = GaussianDistribution::errorFunctionCumulativeTo($invsqrt2*$x);
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return 0.5*$result;
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}
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private static function errorFunctionCumulativeTo($x)
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{
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// Derived from page 265 of Numerical Recipes 3rd Edition
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$z = abs($x);
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$t = 2.0/(2.0 + $z);
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$ty = 4*$t - 2;
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$coefficients = array(
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-1.3026537197817094,
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6.4196979235649026e-1,
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1.9476473204185836e-2,
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-9.561514786808631e-3,
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-9.46595344482036e-4,
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3.66839497852761e-4,
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4.2523324806907e-5,
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-2.0278578112534e-5,
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-1.624290004647e-6,
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1.303655835580e-6,
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1.5626441722e-8,
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-8.5238095915e-8,
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6.529054439e-9,
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5.059343495e-9,
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-9.91364156e-10,
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-2.27365122e-10,
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9.6467911e-11,
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2.394038e-12,
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-6.886027e-12,
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8.94487e-13,
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3.13092e-13,
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-1.12708e-13,
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3.81e-16,
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7.106e-15,
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-1.523e-15,
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-9.4e-17,
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1.21e-16,
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-2.8e-17 );
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$ncof = count($coefficients);
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$d = 0.0;
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$dd = 0.0;
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for ($j = $ncof - 1; $j > 0; $j--)
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{
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$tmp = $d;
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$d = $ty*$d - $dd + $coefficients[$j];
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$dd = $tmp;
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}
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$ans = $t*exp(-$z*$z + 0.5*($coefficients[0] + $ty*$d) - $dd);
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return ($x >= 0.0) ? $ans : (2.0 - $ans);
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}
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private static function inverseErrorFunctionCumulativeTo($p)
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{
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// From page 265 of numerical recipes
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if ($p >= 2.0)
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{
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return -100;
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}
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if ($p <= 0.0)
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{
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return 100;
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}
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$pp = ($p < 1.0) ? $p : 2 - $p;
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$t = sqrt(-2*log($pp/2.0)); // Initial guess
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$x = -0.70711*((2.30753 + $t*0.27061)/(1.0 + $t*(0.99229 + $t*0.04481)) - $t);
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for ($j = 0; $j < 2; $j++)
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{
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$err = GaussianDistribution::errorFunctionCumulativeTo($x) - $pp;
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$x += $err/(1.12837916709551257*exp(-square($x)) - $x*$err); // Halley
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}
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return ($p < 1.0) ? $x : -$x;
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}
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public static function inverseCumulativeTo($x, $mean = 0.0, $standardDeviation = 1.0)
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{
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// From numerical recipes, page 320
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return $mean - sqrt(2)*$standardDeviation*GaussianDistribution::inverseErrorFunctionCumulativeTo(2*$x);
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}
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public function __toString()
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{
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return 'mean=' . $this->_mean . ' standardDeviation=' . $this->_standardDeviation;
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}
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}
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?>
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