Java Code Examples for org.apache.commons.math3.distribution.MixtureMultivariateNormalDistribution#getComponents()
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org.apache.commons.math3.distribution.MixtureMultivariateNormalDistribution#getComponents() .
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Example 1
Source File: MultivariateNormalMixtureExpectationMaximizationTest.java From astor with GNU General Public License v2.0 | 5 votes |
@Ignore@Test public void testInitialMixture() { // Testing initial mixture estimated from data double[] correctWeights = new double[] { 0.5, 0.5 }; MultivariateNormalDistribution[] correctMVNs = new MultivariateNormalDistribution[2]; correctMVNs[0] = new MultivariateNormalDistribution(new double[] { -0.0021722935000328823, 3.5432892936887908 }, new double[][] { { 4.537422569229048, 3.5266152281729304 }, { 3.5266152281729304, 6.175448814169779 } }); correctMVNs[1] = new MultivariateNormalDistribution(new double[] { 5.090902706507635, 8.68540656355283 }, new double[][] { { 2.886778573963039, 1.5257474543463154 }, { 1.5257474543463154, 3.3794567673616918 } }); final MixtureMultivariateNormalDistribution initialMix = MultivariateNormalMixtureExpectationMaximization.estimate(getTestSamples(), 2); int i = 0; for (Pair<Double, MultivariateNormalDistribution> component : initialMix .getComponents()) { Assert.assertEquals(correctWeights[i], component.getFirst(), Math.ulp(1d)); Assert.assertEquals(correctMVNs[i], component.getSecond()); i++; } }
Example 2
Source File: MultivariateNormalMixtureExpectationMaximizationTest.java From astor with GNU General Public License v2.0 | 4 votes |
@Test public void testInitialMixture() { // Testing initial mixture estimated from data final double[] correctWeights = new double[] { 0.5, 0.5 }; final double[][] correctMeans = new double[][] { {-0.0021722935000328823, 3.5432892936887908}, {5.090902706507635, 8.68540656355283}, }; final RealMatrix[] correctCovMats = new Array2DRowRealMatrix[2]; correctCovMats[0] = new Array2DRowRealMatrix(new double[][] { { 4.537422569229048, 3.5266152281729304 }, { 3.5266152281729304, 6.175448814169779 } }); correctCovMats[1] = new Array2DRowRealMatrix( new double[][] { { 2.886778573963039, 1.5257474543463154 }, { 1.5257474543463154, 3.3794567673616918 } }); final MultivariateNormalDistribution[] correctMVNs = new MultivariateNormalDistribution[2]; correctMVNs[0] = new MultivariateNormalDistribution(correctMeans[0], correctCovMats[0].getData()); correctMVNs[1] = new MultivariateNormalDistribution(correctMeans[1], correctCovMats[1].getData()); final MixtureMultivariateNormalDistribution initialMix = MultivariateNormalMixtureExpectationMaximization.estimate(getTestSamples(), 2); int i = 0; for (Pair<Double, MultivariateNormalDistribution> component : initialMix .getComponents()) { Assert.assertEquals(correctWeights[i], component.getFirst(), Math.ulp(1d)); final double[] means = component.getValue().getMeans(); Assert.assertTrue(Arrays.equals(correctMeans[i], means)); final RealMatrix covMat = component.getValue().getCovariances(); Assert.assertEquals(correctCovMats[i], covMat); i++; } }
Example 3
Source File: MultivariateNormalMixtureExpectationMaximizationTest.java From astor with GNU General Public License v2.0 | 4 votes |
@Test public void testFit() { // Test that the loglikelihood, weights, and models are determined and // fitted correctly final double[][] data = getTestSamples(); final double correctLogLikelihood = -4.292431006791994; final double[] correctWeights = new double[] { 0.2962324189652912, 0.7037675810347089 }; final double[][] correctMeans = new double[][]{ {-1.4213112715121132, 1.6924690505757753}, {4.213612224374709, 7.975621325853645} }; final RealMatrix[] correctCovMats = new Array2DRowRealMatrix[2]; correctCovMats[0] = new Array2DRowRealMatrix(new double[][] { { 1.739356907285747, -0.5867644251487614 }, { -0.5867644251487614, 1.0232932029324642 } } ); correctCovMats[1] = new Array2DRowRealMatrix(new double[][] { { 4.245384898007161, 2.5797798966382155 }, { 2.5797798966382155, 3.9200272522448367 } }); final MultivariateNormalDistribution[] correctMVNs = new MultivariateNormalDistribution[2]; correctMVNs[0] = new MultivariateNormalDistribution(correctMeans[0], correctCovMats[0].getData()); correctMVNs[1] = new MultivariateNormalDistribution(correctMeans[1], correctCovMats[1].getData()); MultivariateNormalMixtureExpectationMaximization fitter = new MultivariateNormalMixtureExpectationMaximization(data); MixtureMultivariateNormalDistribution initialMix = MultivariateNormalMixtureExpectationMaximization.estimate(data, 2); fitter.fit(initialMix); MixtureMultivariateNormalDistribution fittedMix = fitter.getFittedModel(); List<Pair<Double, MultivariateNormalDistribution>> components = fittedMix.getComponents(); Assert.assertEquals(correctLogLikelihood, fitter.getLogLikelihood(), Math.ulp(1d)); int i = 0; for (Pair<Double, MultivariateNormalDistribution> component : components) { final double weight = component.getFirst(); final MultivariateNormalDistribution mvn = component.getSecond(); final double[] mean = mvn.getMeans(); final RealMatrix covMat = mvn.getCovariances(); Assert.assertEquals(correctWeights[i], weight, Math.ulp(1d)); Assert.assertTrue(Arrays.equals(correctMeans[i], mean)); Assert.assertEquals(correctCovMats[i], covMat); i++; } }
Example 4
Source File: MultivariateNormalMixtureExpectationMaximizationTest.java From astor with GNU General Public License v2.0 | 4 votes |
@Test public void testInitialMixture() { // Testing initial mixture estimated from data final double[] correctWeights = new double[] { 0.5, 0.5 }; final double[][] correctMeans = new double[][] { {-0.0021722935000328823, 3.5432892936887908}, {5.090902706507635, 8.68540656355283}, }; final RealMatrix[] correctCovMats = new Array2DRowRealMatrix[2]; correctCovMats[0] = new Array2DRowRealMatrix(new double[][] { { 4.537422569229048, 3.5266152281729304 }, { 3.5266152281729304, 6.175448814169779 } }); correctCovMats[1] = new Array2DRowRealMatrix( new double[][] { { 2.886778573963039, 1.5257474543463154 }, { 1.5257474543463154, 3.3794567673616918 } }); final MultivariateNormalDistribution[] correctMVNs = new MultivariateNormalDistribution[2]; correctMVNs[0] = new MultivariateNormalDistribution(correctMeans[0], correctCovMats[0].getData()); correctMVNs[1] = new MultivariateNormalDistribution(correctMeans[1], correctCovMats[1].getData()); final MixtureMultivariateNormalDistribution initialMix = MultivariateNormalMixtureExpectationMaximization.estimate(getTestSamples(), 2); int i = 0; for (Pair<Double, MultivariateNormalDistribution> component : initialMix .getComponents()) { Assert.assertEquals(correctWeights[i], component.getFirst(), Math.ulp(1d)); final double[] means = component.getValue().getMeans(); Assert.assertTrue(Arrays.equals(correctMeans[i], means)); final RealMatrix covMat = component.getValue().getCovariances(); Assert.assertEquals(correctCovMats[i], covMat); i++; } }
Example 5
Source File: MultivariateNormalMixtureExpectationMaximizationTest.java From astor with GNU General Public License v2.0 | 4 votes |
@Test public void testFit() { // Test that the loglikelihood, weights, and models are determined and // fitted correctly final double[][] data = getTestSamples(); final double correctLogLikelihood = -4.292431006791994; final double[] correctWeights = new double[] { 0.2962324189652912, 0.7037675810347089 }; final double[][] correctMeans = new double[][]{ {-1.4213112715121132, 1.6924690505757753}, {4.213612224374709, 7.975621325853645} }; final RealMatrix[] correctCovMats = new Array2DRowRealMatrix[2]; correctCovMats[0] = new Array2DRowRealMatrix(new double[][] { { 1.739356907285747, -0.5867644251487614 }, { -0.5867644251487614, 1.0232932029324642 } } ); correctCovMats[1] = new Array2DRowRealMatrix(new double[][] { { 4.245384898007161, 2.5797798966382155 }, { 2.5797798966382155, 3.9200272522448367 } }); final MultivariateNormalDistribution[] correctMVNs = new MultivariateNormalDistribution[2]; correctMVNs[0] = new MultivariateNormalDistribution(correctMeans[0], correctCovMats[0].getData()); correctMVNs[1] = new MultivariateNormalDistribution(correctMeans[1], correctCovMats[1].getData()); MultivariateNormalMixtureExpectationMaximization fitter = new MultivariateNormalMixtureExpectationMaximization(data); MixtureMultivariateNormalDistribution initialMix = MultivariateNormalMixtureExpectationMaximization.estimate(data, 2); fitter.fit(initialMix); MixtureMultivariateNormalDistribution fittedMix = fitter.getFittedModel(); List<Pair<Double, MultivariateNormalDistribution>> components = fittedMix.getComponents(); Assert.assertEquals(correctLogLikelihood, fitter.getLogLikelihood(), Math.ulp(1d)); int i = 0; for (Pair<Double, MultivariateNormalDistribution> component : components) { final double weight = component.getFirst(); final MultivariateNormalDistribution mvn = component.getSecond(); final double[] mean = mvn.getMeans(); final RealMatrix covMat = mvn.getCovariances(); Assert.assertEquals(correctWeights[i], weight, Math.ulp(1d)); Assert.assertTrue(Arrays.equals(correctMeans[i], mean)); Assert.assertEquals(correctCovMats[i], covMat); i++; } }
Example 6
Source File: MultivariateNormalMixtureExpectationMaximizationTest.java From astor with GNU General Public License v2.0 | 4 votes |
@Ignore@Test public void testFit() { // Test that the loglikelihood, weights, and models are determined and // fitted correctly double[][] data = getTestSamples(); double correctLogLikelihood = -4.292431006791994; double[] correctWeights = new double[] { 0.2962324189652912, 0.7037675810347089 }; MultivariateNormalDistribution[] correctMVNs = new MultivariateNormalDistribution[2]; correctMVNs[0] = new MultivariateNormalDistribution(new double[] { -1.4213112715121132, 1.6924690505757753 }, new double[][] { { 1.739356907285747, -0.5867644251487614 }, { -0.5867644251487614, 1.0232932029324642 } }); correctMVNs[1] = new MultivariateNormalDistribution(new double[] { 4.213612224374709, 7.975621325853645 }, new double[][] { { 4.245384898007161, 2.5797798966382155 }, { 2.5797798966382155, 3.9200272522448367 } }); MultivariateNormalMixtureExpectationMaximization fitter = new MultivariateNormalMixtureExpectationMaximization(data); MixtureMultivariateNormalDistribution initialMix = MultivariateNormalMixtureExpectationMaximization.estimate(data, 2); fitter.fit(initialMix); MixtureMultivariateNormalDistribution fittedMix = fitter.getFittedModel(); List<Pair<Double, MultivariateNormalDistribution>> components = fittedMix.getComponents(); Assert.assertEquals(correctLogLikelihood, fitter.getLogLikelihood(), Math.ulp(1d)); int i = 0; for (Pair<Double, MultivariateNormalDistribution> component : components) { double weight = component.getFirst(); MultivariateNormalDistribution mvn = component.getSecond(); Assert.assertEquals(correctWeights[i], weight, Math.ulp(1d)); Assert.assertEquals(correctMVNs[i], mvn); i++; } }
Example 7
Source File: MultivariateNormalMixtureExpectationMaximizationTest.java From astor with GNU General Public License v2.0 | 4 votes |
@Test public void testInitialMixture() { // Testing initial mixture estimated from data final double[] correctWeights = new double[] { 0.5, 0.5 }; final double[][] correctMeans = new double[][] { {-0.0021722935000328823, 3.5432892936887908}, {5.090902706507635, 8.68540656355283}, }; final RealMatrix[] correctCovMats = new Array2DRowRealMatrix[2]; correctCovMats[0] = new Array2DRowRealMatrix(new double[][] { { 4.537422569229048, 3.5266152281729304 }, { 3.5266152281729304, 6.175448814169779 } }); correctCovMats[1] = new Array2DRowRealMatrix( new double[][] { { 2.886778573963039, 1.5257474543463154 }, { 1.5257474543463154, 3.3794567673616918 } }); final MultivariateNormalDistribution[] correctMVNs = new MultivariateNormalDistribution[2]; correctMVNs[0] = new MultivariateNormalDistribution(correctMeans[0], correctCovMats[0].getData()); correctMVNs[1] = new MultivariateNormalDistribution(correctMeans[1], correctCovMats[1].getData()); final MixtureMultivariateNormalDistribution initialMix = MultivariateNormalMixtureExpectationMaximization.estimate(getTestSamples(), 2); int i = 0; for (Pair<Double, MultivariateNormalDistribution> component : initialMix .getComponents()) { Assert.assertEquals(correctWeights[i], component.getFirst(), Math.ulp(1d)); final double[] means = component.getValue().getMeans(); Assert.assertTrue(Arrays.equals(correctMeans[i], means)); final RealMatrix covMat = component.getValue().getCovariances(); Assert.assertEquals(correctCovMats[i], covMat); i++; } }
Example 8
Source File: MultivariateNormalMixtureExpectationMaximizationTest.java From astor with GNU General Public License v2.0 | 4 votes |
@Test public void testFit() { // Test that the loglikelihood, weights, and models are determined and // fitted correctly final double[][] data = getTestSamples(); final double correctLogLikelihood = -4.292431006791994; final double[] correctWeights = new double[] { 0.2962324189652912, 0.7037675810347089 }; final double[][] correctMeans = new double[][]{ {-1.4213112715121132, 1.6924690505757753}, {4.213612224374709, 7.975621325853645} }; final RealMatrix[] correctCovMats = new Array2DRowRealMatrix[2]; correctCovMats[0] = new Array2DRowRealMatrix(new double[][] { { 1.739356907285747, -0.5867644251487614 }, { -0.5867644251487614, 1.0232932029324642 } } ); correctCovMats[1] = new Array2DRowRealMatrix(new double[][] { { 4.245384898007161, 2.5797798966382155 }, { 2.5797798966382155, 3.9200272522448367 } }); final MultivariateNormalDistribution[] correctMVNs = new MultivariateNormalDistribution[2]; correctMVNs[0] = new MultivariateNormalDistribution(correctMeans[0], correctCovMats[0].getData()); correctMVNs[1] = new MultivariateNormalDistribution(correctMeans[1], correctCovMats[1].getData()); MultivariateNormalMixtureExpectationMaximization fitter = new MultivariateNormalMixtureExpectationMaximization(data); MixtureMultivariateNormalDistribution initialMix = MultivariateNormalMixtureExpectationMaximization.estimate(data, 2); fitter.fit(initialMix); MixtureMultivariateNormalDistribution fittedMix = fitter.getFittedModel(); List<Pair<Double, MultivariateNormalDistribution>> components = fittedMix.getComponents(); Assert.assertEquals(correctLogLikelihood, fitter.getLogLikelihood(), Math.ulp(1d)); int i = 0; for (Pair<Double, MultivariateNormalDistribution> component : components) { final double weight = component.getFirst(); final MultivariateNormalDistribution mvn = component.getSecond(); final double[] mean = mvn.getMeans(); final RealMatrix covMat = mvn.getCovariances(); Assert.assertEquals(correctWeights[i], weight, Math.ulp(1d)); Assert.assertTrue(Arrays.equals(correctMeans[i], mean)); Assert.assertEquals(correctCovMats[i], covMat); i++; } }
Example 9
Source File: MultivariateNormalMixtureExpectationMaximizationTest.java From astor with GNU General Public License v2.0 | 4 votes |
@Test public void testInitialMixture() { // Testing initial mixture estimated from data final double[] correctWeights = new double[] { 0.5, 0.5 }; final double[][] correctMeans = new double[][] { {-0.0021722935000328823, 3.5432892936887908}, {5.090902706507635, 8.68540656355283}, }; final RealMatrix[] correctCovMats = new Array2DRowRealMatrix[2]; correctCovMats[0] = new Array2DRowRealMatrix(new double[][] { { 4.537422569229048, 3.5266152281729304 }, { 3.5266152281729304, 6.175448814169779 } }); correctCovMats[1] = new Array2DRowRealMatrix( new double[][] { { 2.886778573963039, 1.5257474543463154 }, { 1.5257474543463154, 3.3794567673616918 } }); final MultivariateNormalDistribution[] correctMVNs = new MultivariateNormalDistribution[2]; correctMVNs[0] = new MultivariateNormalDistribution(correctMeans[0], correctCovMats[0].getData()); correctMVNs[1] = new MultivariateNormalDistribution(correctMeans[1], correctCovMats[1].getData()); final MixtureMultivariateNormalDistribution initialMix = MultivariateNormalMixtureExpectationMaximization.estimate(getTestSamples(), 2); int i = 0; for (Pair<Double, MultivariateNormalDistribution> component : initialMix .getComponents()) { Assert.assertEquals(correctWeights[i], component.getFirst(), Math.ulp(1d)); final double[] means = component.getValue().getMeans(); Assert.assertTrue(Arrays.equals(correctMeans[i], means)); final RealMatrix covMat = component.getValue().getCovariances(); Assert.assertEquals(correctCovMats[i], covMat); i++; } }
Example 10
Source File: MultivariateNormalMixtureExpectationMaximizationTest.java From astor with GNU General Public License v2.0 | 4 votes |
@Test public void testFit() { // Test that the loglikelihood, weights, and models are determined and // fitted correctly final double[][] data = getTestSamples(); final double correctLogLikelihood = -4.292431006791994; final double[] correctWeights = new double[] { 0.2962324189652912, 0.7037675810347089 }; final double[][] correctMeans = new double[][]{ {-1.4213112715121132, 1.6924690505757753}, {4.213612224374709, 7.975621325853645} }; final RealMatrix[] correctCovMats = new Array2DRowRealMatrix[2]; correctCovMats[0] = new Array2DRowRealMatrix(new double[][] { { 1.739356907285747, -0.5867644251487614 }, { -0.5867644251487614, 1.0232932029324642 } } ); correctCovMats[1] = new Array2DRowRealMatrix(new double[][] { { 4.245384898007161, 2.5797798966382155 }, { 2.5797798966382155, 3.9200272522448367 } }); final MultivariateNormalDistribution[] correctMVNs = new MultivariateNormalDistribution[2]; correctMVNs[0] = new MultivariateNormalDistribution(correctMeans[0], correctCovMats[0].getData()); correctMVNs[1] = new MultivariateNormalDistribution(correctMeans[1], correctCovMats[1].getData()); MultivariateNormalMixtureExpectationMaximization fitter = new MultivariateNormalMixtureExpectationMaximization(data); MixtureMultivariateNormalDistribution initialMix = MultivariateNormalMixtureExpectationMaximization.estimate(data, 2); fitter.fit(initialMix); MixtureMultivariateNormalDistribution fittedMix = fitter.getFittedModel(); List<Pair<Double, MultivariateNormalDistribution>> components = fittedMix.getComponents(); Assert.assertEquals(correctLogLikelihood, fitter.getLogLikelihood(), Math.ulp(1d)); int i = 0; for (Pair<Double, MultivariateNormalDistribution> component : components) { final double weight = component.getFirst(); final MultivariateNormalDistribution mvn = component.getSecond(); final double[] mean = mvn.getMeans(); final RealMatrix covMat = mvn.getCovariances(); Assert.assertEquals(correctWeights[i], weight, Math.ulp(1d)); Assert.assertTrue(Arrays.equals(correctMeans[i], mean)); Assert.assertEquals(correctCovMats[i], covMat); i++; } }