php-ml/tests/Phpml/Metric/ClassificationReportTest.php

85 lines
3.0 KiB
PHP
Raw Normal View History

2016-07-19 19:58:59 +00:00
<?php
2016-07-19 19:59:23 +00:00
2016-11-20 21:53:17 +00:00
declare(strict_types=1);
2016-07-19 19:58:59 +00:00
namespace tests\Phpml\Metric;
use Phpml\Metric\ClassificationReport;
2016-11-20 21:53:17 +00:00
class ClassificationReportTest extends \PHPUnit_Framework_TestCase
2016-07-19 19:58:59 +00:00
{
public function testClassificationReportGenerateWithStringLabels()
{
$labels = ['cat', 'ant', 'bird', 'bird', 'bird'];
2016-07-19 19:59:23 +00:00
$predicted = ['cat', 'cat', 'bird', 'bird', 'ant'];
2016-07-19 19:58:59 +00:00
$report = new ClassificationReport($labels, $predicted);
$precision = ['cat' => 0.5, 'ant' => 0.0, 'bird' => 1.0];
$recall = ['cat' => 1.0, 'ant' => 0.0, 'bird' => 0.67];
$f1score = ['cat' => 0.67, 'ant' => 0.0, 'bird' => 0.80];
$support = ['cat' => 1, 'ant' => 1, 'bird' => 3];
$average = ['precision' => 0.75, 'recall' => 0.83, 'f1score' => 0.73];
$this->assertEquals($precision, $report->getPrecision(), '', 0.01);
$this->assertEquals($recall, $report->getRecall(), '', 0.01);
$this->assertEquals($f1score, $report->getF1score(), '', 0.01);
$this->assertEquals($support, $report->getSupport(), '', 0.01);
$this->assertEquals($average, $report->getAverage(), '', 0.01);
}
2016-07-19 20:01:39 +00:00
public function testClassificationReportGenerateWithNumericLabels()
{
$labels = [0, 1, 2, 2, 2];
$predicted = [0, 0, 2, 2, 1];
$report = new ClassificationReport($labels, $predicted);
$precision = [0 => 0.5, 1 => 0.0, 2 => 1.0];
$recall = [0 => 1.0, 1 => 0.0, 2 => 0.67];
$f1score = [0 => 0.67, 1 => 0.0, 2 => 0.80];
$support = [0 => 1, 1 => 1, 2 => 3];
$average = ['precision' => 0.75, 'recall' => 0.83, 'f1score' => 0.73];
$this->assertEquals($precision, $report->getPrecision(), '', 0.01);
$this->assertEquals($recall, $report->getRecall(), '', 0.01);
$this->assertEquals($f1score, $report->getF1score(), '', 0.01);
$this->assertEquals($support, $report->getSupport(), '', 0.01);
$this->assertEquals($average, $report->getAverage(), '', 0.01);
}
public function testPreventDivideByZeroWhenTruePositiveAndFalsePositiveSumEqualsZero()
{
$labels = [1, 2];
$predicted = [2, 2];
$report = new ClassificationReport($labels, $predicted);
$this->assertEquals([1 => 0.0, 2 => 0.5], $report->getPrecision(), '', 0.01);
}
public function testPreventDivideByZeroWhenTruePositiveAndFalseNegativeSumEqualsZero()
{
$labels = [2, 2, 1];
$predicted = [2, 2, 3];
$report = new ClassificationReport($labels, $predicted);
$this->assertEquals([1 => 0.0, 2 => 1, 3 => 0], $report->getPrecision(), '', 0.01);
}
public function testPreventDividedByZeroWhenPredictedLabelsAllNotMatch()
{
2016-11-20 21:53:17 +00:00
$labels = [1, 2, 3, 4, 5];
$predicted = [2, 3, 4, 5, 6];
$report = new ClassificationReport($labels, $predicted);
$this->assertEquals([
'precision' => 0,
'recall' => 0,
2016-11-20 21:53:17 +00:00
'f1score' => 0,
], $report->getAverage(), '', 0.01);
}
2016-07-19 19:58:59 +00:00
}