generator = new Agglomerate([ 'red' => new Blob([255, 32, 0], 50.0), 'green' => new Blob([0, 128, 0], 10.0), 'blue' => new Blob([0, 32, 255], 30.0), ], [0.5, 0.2, 0.3]); $this->estimator = new FuzzyCMeans(3, 2.0, 300, 1e-4, new Euclidean(), new Random()); $this->metric = new VMeasure(); srand(self::RANDOM_SEED); } protected function assertPreConditions() : void { $this->assertFalse($this->estimator->trained()); } /** * @test */ public function build() : void { $this->assertInstanceOf(FuzzyCMeans::class, $this->estimator); $this->assertInstanceOf(Learner::class, $this->estimator); $this->assertInstanceOf(Probabilistic::class, $this->estimator); $this->assertInstanceOf(Verbose::class, $this->estimator); $this->assertInstanceOf(Persistable::class, $this->estimator); $this->assertInstanceOf(Estimator::class, $this->estimator); } /** * @test */ public function badC() : void { $this->expectException(InvalidArgumentException::class); new FuzzyCMeans(0); } /** * @test */ public function type() : void { $this->assertEquals(EstimatorType::clusterer(), $this->estimator->type()); } /** * @test */ public function compatibility() : void { $expected = [ DataType::continuous(), ]; $this->assertEquals($expected, $this->estimator->compatibility()); } /** * @test */ public function params() : void { $expected = [ 'c' => 3, 'fuzz' => 2.0, 'epochs' => 300, 'min change' => 1e-4, 'kernel' => new Euclidean(), 'seeder' => new Random(), ]; $this->assertEquals($expected, $this->estimator->params()); } /** * @test */ public function trainPredict() : void { $this->estimator->setLogger(new BlackHole()); $training = $this->generator->generate(self::TRAIN_SIZE); $testing = $this->generator->generate(self::TEST_SIZE); $this->estimator->train($training); $this->assertTrue($this->estimator->trained()); $centroids = $this->estimator->centroids(); $this->assertIsArray($centroids); $this->assertCount(3, $centroids); $this->assertContainsOnly('array', $centroids); $losses = $this->estimator->losses(); $this->assertIsArray($losses); $this->assertContainsOnly('float', $losses); $predictions = $this->estimator->predict($testing); $score = $this->metric->score($predictions, $testing->labels()); $this->assertGreaterThanOrEqual(self::MIN_SCORE, $score); } /** * @test */ public function trainIncompatible() : void { $this->expectException(InvalidArgumentException::class); $this->estimator->train(Unlabeled::quick([['bad']])); } /** * @test */ public function predictUntrained() : void { $this->expectException(RuntimeException::class); $this->estimator->predict(Unlabeled::quick()); } }