/* * Licensed to the Apache Software Foundation (ASF) under one or more * contributor license agreements. See the NOTICE file distributed with * this work for additional information regarding copyright ownership. * The ASF licenses this file to You under the Apache License, Version 2.0 * (the "License"); you may not use this file except in compliance with * the License. You may obtain a copy of the License at * * http://www.apache.org/licenses/LICENSE-2.0 * * Unless required by applicable law or agreed to in writing, software * distributed under the License is distributed on an "AS IS" BASIS, * WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. * See the License for the specific language governing permissions and * limitations under the License. */ package org.apache.commons.math4.stat.regression; import org.apache.commons.math4.TestUtils; import org.apache.commons.math4.exception.MathIllegalArgumentException; import org.apache.commons.math4.exception.NullArgumentException; import org.apache.commons.math4.linear.Array2DRowRealMatrix; import org.apache.commons.math4.linear.DefaultRealMatrixChangingVisitor; import org.apache.commons.math4.linear.MatrixUtils; import org.apache.commons.math4.linear.RealMatrix; import org.apache.commons.math4.linear.RealVector; import org.apache.commons.math4.stat.StatUtils; import org.apache.commons.math4.stat.regression.OLSMultipleLinearRegression; import org.junit.Assert; import org.junit.Before; import org.junit.Test; public class OLSMultipleLinearRegressionTest extends MultipleLinearRegressionAbstractTest { private double[] y; private double[][] x; @Before @Override public void setUp(){ y = new double[]{11.0, 12.0, 13.0, 14.0, 15.0, 16.0}; x = new double[6][]; x[0] = new double[]{0, 0, 0, 0, 0}; x[1] = new double[]{2.0, 0, 0, 0, 0}; x[2] = new double[]{0, 3.0, 0, 0, 0}; x[3] = new double[]{0, 0, 4.0, 0, 0}; x[4] = new double[]{0, 0, 0, 5.0, 0}; x[5] = new double[]{0, 0, 0, 0, 6.0}; super.setUp(); } @Override protected OLSMultipleLinearRegression createRegression() { OLSMultipleLinearRegression regression = new OLSMultipleLinearRegression(); regression.newSampleData(y, x); return regression; } @Override protected int getNumberOfRegressors() { return x[0].length + 1; } @Override protected int getSampleSize() { return y.length; } @Test(expected=MathIllegalArgumentException.class) public void cannotAddSampleDataWithSizeMismatch() { double[] y = new double[]{1.0, 2.0}; double[][] x = new double[1][]; x[0] = new double[]{1.0, 0}; createRegression().newSampleData(y, x); } @Test public void testPerfectFit() { double[] betaHat = regression.estimateRegressionParameters(); TestUtils.assertEquals(betaHat, new double[]{ 11.0, 1.0 / 2.0, 2.0 / 3.0, 3.0 / 4.0, 4.0 / 5.0, 5.0 / 6.0 }, 1e-14); double[] residuals = regression.estimateResiduals(); TestUtils.assertEquals(residuals, new double[]{0d,0d,0d,0d,0d,0d}, 1e-14); RealMatrix errors = new Array2DRowRealMatrix(regression.estimateRegressionParametersVariance(), false); final double[] s = { 1.0, -1.0 / 2.0, -1.0 / 3.0, -1.0 / 4.0, -1.0 / 5.0, -1.0 / 6.0 }; RealMatrix referenceVariance = new Array2DRowRealMatrix(s.length, s.length); referenceVariance.walkInOptimizedOrder(new DefaultRealMatrixChangingVisitor() { @Override public double visit(int row, int column, double value) { if (row == 0) { return s[column]; } double x = s[row] * s[column]; return (row == column) ? 2 * x : x; } }); Assert.assertEquals(0.0, errors.subtract(referenceVariance).getNorm(), 5.0e-16 * referenceVariance.getNorm()); Assert.assertEquals(1, ((OLSMultipleLinearRegression) regression).calculateRSquared(), 1E-12); } /** * Test Longley dataset against certified values provided by NIST. * Data Source: J. Longley (1967) "An Appraisal of Least Squares * Programs for the Electronic Computer from the Point of View of the User" * Journal of the American Statistical Association, vol. 62. September, * pp. 819-841. * * Certified values (and data) are from NIST: * http://www.itl.nist.gov/div898/strd/lls/data/LINKS/DATA/Longley.dat */ @Test public void testLongly() { // Y values are first, then independent vars // Each row is one observation double[] design = new double[] { 60323,83.0,234289,2356,1590,107608,1947, 61122,88.5,259426,2325,1456,108632,1948, 60171,88.2,258054,3682,1616,109773,1949, 61187,89.5,284599,3351,1650,110929,1950, 63221,96.2,328975,2099,3099,112075,1951, 63639,98.1,346999,1932,3594,113270,1952, 64989,99.0,365385,1870,3547,115094,1953, 63761,100.0,363112,3578,3350,116219,1954, 66019,101.2,397469,2904,3048,117388,1955, 67857,104.6,419180,2822,2857,118734,1956, 68169,108.4,442769,2936,2798,120445,1957, 66513,110.8,444546,4681,2637,121950,1958, 68655,112.6,482704,3813,2552,123366,1959, 69564,114.2,502601,3931,2514,125368,1960, 69331,115.7,518173,4806,2572,127852,1961, 70551,116.9,554894,4007,2827,130081,1962 }; final int nobs = 16; final int nvars = 6; // Estimate the model OLSMultipleLinearRegression model = new OLSMultipleLinearRegression(); model.newSampleData(design, nobs, nvars); // Check expected beta values from NIST double[] betaHat = model.estimateRegressionParameters(); TestUtils.assertEquals(betaHat, new double[]{-3482258.63459582, 15.0618722713733, -0.358191792925910E-01,-2.02022980381683, -1.03322686717359,-0.511041056535807E-01, 1829.15146461355}, 2E-8); // // Check expected residuals from R double[] residuals = model.estimateResiduals(); TestUtils.assertEquals(residuals, new double[]{ 267.340029759711,-94.0139423988359,46.28716775752924, -410.114621930906,309.7145907602313,-249.3112153297231, -164.0489563956039,-13.18035686637081,14.30477260005235, 455.394094551857,-17.26892711483297,-39.0550425226967, -155.5499735953195,-85.6713080421283,341.9315139607727, -206.7578251937366}, 1E-8); // Check standard errors from NIST double[] errors = model.estimateRegressionParametersStandardErrors(); TestUtils.assertEquals(new double[] {890420.383607373, 84.9149257747669, 0.334910077722432E-01, 0.488399681651699, 0.214274163161675, 0.226073200069370, 455.478499142212}, errors, 1E-6); // Check regression standard error against R Assert.assertEquals(304.8540735619638, model.estimateRegressionStandardError(), 1E-10); // Check R-Square statistics against R Assert.assertEquals(0.995479004577296, model.calculateRSquared(), 1E-12); Assert.assertEquals(0.992465007628826, model.calculateAdjustedRSquared(), 1E-12); checkVarianceConsistency(model); // Estimate model without intercept model.setNoIntercept(true); model.newSampleData(design, nobs, nvars); // Check expected beta values from R betaHat = model.estimateRegressionParameters(); TestUtils.assertEquals(betaHat, new double[]{-52.99357013868291, 0.07107319907358, -0.42346585566399,-0.57256866841929, -0.41420358884978, 48.41786562001326}, 1E-11); // Check standard errors from R errors = model.estimateRegressionParametersStandardErrors(); TestUtils.assertEquals(new double[] {129.54486693117232, 0.03016640003786, 0.41773654056612, 0.27899087467676, 0.32128496193363, 17.68948737819961}, errors, 1E-11); // Check expected residuals from R residuals = model.estimateResiduals(); TestUtils.assertEquals(residuals, new double[]{ 279.90274927293092, -130.32465380836874, 90.73228661967445, -401.31252201634948, -440.46768772620027, -543.54512853774793, 201.32111639536299, 215.90889365977932, 73.09368242049943, 913.21694494481869, 424.82484953610174, -8.56475876776709, -361.32974610842876, 27.34560497213464, 151.28955976355002, -492.49937355336846}, 1E-10); // Check regression standard error against R Assert.assertEquals(475.1655079819517, model.estimateRegressionStandardError(), 1E-10); // Check R-Square statistics against R Assert.assertEquals(0.9999670130706, model.calculateRSquared(), 1E-12); Assert.assertEquals(0.999947220913, model.calculateAdjustedRSquared(), 1E-12); } /** * Test R Swiss fertility dataset against R. * Data Source: R datasets package */ @Test public void testSwissFertility() { double[] design = new double[] { 80.2,17.0,15,12,9.96, 83.1,45.1,6,9,84.84, 92.5,39.7,5,5,93.40, 85.8,36.5,12,7,33.77, 76.9,43.5,17,15,5.16, 76.1,35.3,9,7,90.57, 83.8,70.2,16,7,92.85, 92.4,67.8,14,8,97.16, 82.4,53.3,12,7,97.67, 82.9,45.2,16,13,91.38, 87.1,64.5,14,6,98.61, 64.1,62.0,21,12,8.52, 66.9,67.5,14,7,2.27, 68.9,60.7,19,12,4.43, 61.7,69.3,22,5,2.82, 68.3,72.6,18,2,24.20, 71.7,34.0,17,8,3.30, 55.7,19.4,26,28,12.11, 54.3,15.2,31,20,2.15, 65.1,73.0,19,9,2.84, 65.5,59.8,22,10,5.23, 65.0,55.1,14,3,4.52, 56.6,50.9,22,12,15.14, 57.4,54.1,20,6,4.20, 72.5,71.2,12,1,2.40, 74.2,58.1,14,8,5.23, 72.0,63.5,6,3,2.56, 60.5,60.8,16,10,7.72, 58.3,26.8,25,19,18.46, 65.4,49.5,15,8,6.10, 75.5,85.9,3,2,99.71, 69.3,84.9,7,6,99.68, 77.3,89.7,5,2,100.00, 70.5,78.2,12,6,98.96, 79.4,64.9,7,3,98.22, 65.0,75.9,9,9,99.06, 92.2,84.6,3,3,99.46, 79.3,63.1,13,13,96.83, 70.4,38.4,26,12,5.62, 65.7,7.7,29,11,13.79, 72.7,16.7,22,13,11.22, 64.4,17.6,35,32,16.92, 77.6,37.6,15,7,4.97, 67.6,18.7,25,7,8.65, 35.0,1.2,37,53,42.34, 44.7,46.6,16,29,50.43, 42.8,27.7,22,29,58.33 }; final int nobs = 47; final int nvars = 4; // Estimate the model OLSMultipleLinearRegression model = new OLSMultipleLinearRegression(); model.newSampleData(design, nobs, nvars); // Check expected beta values from R double[] betaHat = model.estimateRegressionParameters(); TestUtils.assertEquals(betaHat, new double[]{91.05542390271397, -0.22064551045715, -0.26058239824328, -0.96161238456030, 0.12441843147162}, 1E-12); // Check expected residuals from R double[] residuals = model.estimateResiduals(); TestUtils.assertEquals(residuals, new double[]{ 7.1044267859730512,1.6580347433531366, 4.6944952770029644,8.4548022690166160,13.6547432343186212, -9.3586864458500774,7.5822446330520386,15.5568995563859289, 0.8113090736598980,7.1186762732484308,7.4251378771228724, 2.6761316873234109,0.8351584810309354,7.1769991119615177, -3.8746753206299553,-3.1337779476387251,-0.1412575244091504, 1.1186809170469780,-6.3588097346816594,3.4039270429434074, 2.3374058329820175,-7.9272368576900503,-7.8361010968497959, -11.2597369269357070,0.9445333697827101,6.6544245101380328, -0.9146136301118665,-4.3152449403848570,-4.3536932047009183, -3.8907885169304661,-6.3027643926302188,-7.8308982189289091, -3.1792280015332750,-6.7167298771158226,-4.8469946718041754, -10.6335664353633685,11.1031134362036958,6.0084032641811733, 5.4326230830188482,-7.2375578629692230,2.1671550814448222, 15.0147574652763112,4.8625103516321015,-7.1597256413907706, -0.4515205619767598,-10.2916870903837587,-15.7812984571900063}, 1E-12); // Check standard errors from R double[] errors = model.estimateRegressionParametersStandardErrors(); TestUtils.assertEquals(new double[] {6.94881329475087, 0.07360008972340, 0.27410957467466, 0.19454551679325, 0.03726654773803}, errors, 1E-10); // Check regression standard error against R Assert.assertEquals(7.73642194433223, model.estimateRegressionStandardError(), 1E-12); // Check R-Square statistics against R Assert.assertEquals(0.649789742860228, model.calculateRSquared(), 1E-12); Assert.assertEquals(0.6164363850373927, model.calculateAdjustedRSquared(), 1E-12); checkVarianceConsistency(model); // Estimate the model with no intercept model = new OLSMultipleLinearRegression(); model.setNoIntercept(true); model.newSampleData(design, nobs, nvars); // Check expected beta values from R betaHat = model.estimateRegressionParameters(); TestUtils.assertEquals(betaHat, new double[]{0.52191832900513, 2.36588087917963, -0.94770353802795, 0.30851985863609}, 1E-12); // Check expected residuals from R residuals = model.estimateResiduals(); TestUtils.assertEquals(residuals, new double[]{ 44.138759883538249, 27.720705122356215, 35.873200836126799, 34.574619581211977, 26.600168342080213, 15.074636243026923, -12.704904871199814, 1.497443824078134, 2.691972687079431, 5.582798774291231, -4.422986561283165, -9.198581600334345, 4.481765170730647, 2.273520207553216, -22.649827853221336, -17.747900013943308, 20.298314638496436, 6.861405135329779, -8.684712790954924, -10.298639278062371, -9.896618896845819, 4.568568616351242, -15.313570491727944, -13.762961360873966, 7.156100301980509, 16.722282219843990, 26.716200609071898, -1.991466398777079, -2.523342564719335, 9.776486693095093, -5.297535127628603, -16.639070567471094, -10.302057295211819, -23.549487860816846, 1.506624392156384, -17.939174438345930, 13.105792202765040, -1.943329906928462, -1.516005841666695, -0.759066561832886, 20.793137744128977, -2.485236153005426, 27.588238710486976, 2.658333257106881, -15.998337823623046, -5.550742066720694, -14.219077806826615}, 1E-12); // Check standard errors from R errors = model.estimateRegressionParametersStandardErrors(); TestUtils.assertEquals(new double[] {0.10470063765677, 0.41684100584290, 0.43370143099691, 0.07694953606522}, errors, 1E-10); // Check regression standard error against R Assert.assertEquals(17.24710630547, model.estimateRegressionStandardError(), 1E-10); // Check R-Square statistics against R Assert.assertEquals(0.946350722085, model.calculateRSquared(), 1E-12); Assert.assertEquals(0.9413600915813, model.calculateAdjustedRSquared(), 1E-12); } /** * Test hat matrix computation * */ @Test public void testHat() { /* * This example is from "The Hat Matrix in Regression and ANOVA", * David C. Hoaglin and Roy E. Welsch, * The American Statistician, Vol. 32, No. 1 (Feb., 1978), pp. 17-22. * */ double[] design = new double[] { 11.14, .499, 11.1, 12.74, .558, 8.9, 13.13, .604, 8.8, 11.51, .441, 8.9, 12.38, .550, 8.8, 12.60, .528, 9.9, 11.13, .418, 10.7, 11.7, .480, 10.5, 11.02, .406, 10.5, 11.41, .467, 10.7 }; int nobs = 10; int nvars = 2; // Estimate the model OLSMultipleLinearRegression model = new OLSMultipleLinearRegression(); model.newSampleData(design, nobs, nvars); RealMatrix hat = model.calculateHat(); // Reference data is upper half of symmetric hat matrix double[] referenceData = new double[] { .418, -.002, .079, -.274, -.046, .181, .128, .222, .050, .242, .242, .292, .136, .243, .128, -.041, .033, -.035, .004, .417, -.019, .273, .187, -.126, .044, -.153, .004, .604, .197, -.038, .168, -.022, .275, -.028, .252, .111, -.030, .019, -.010, -.010, .148, .042, .117, .012, .111, .262, .145, .277, .174, .154, .120, .168, .315, .148, .187 }; // Check against reference data and verify symmetry int k = 0; for (int i = 0; i < 10; i++) { for (int j = i; j < 10; j++) { Assert.assertEquals(referenceData[k], hat.getEntry(i, j), 10e-3); Assert.assertEquals(hat.getEntry(i, j), hat.getEntry(j, i), 10e-12); k++; } } /* * Verify that residuals computed using the hat matrix are close to * what we get from direct computation, i.e. r = (I - H) y */ double[] residuals = model.estimateResiduals(); RealMatrix I = MatrixUtils.createRealIdentityMatrix(10); double[] hatResiduals = I.subtract(hat).operate(model.getY()).toArray(); TestUtils.assertEquals(residuals, hatResiduals, 10e-12); } /** * test calculateYVariance */ @Test public void testYVariance() { // assumes: y = new double[]{11.0, 12.0, 13.0, 14.0, 15.0, 16.0}; OLSMultipleLinearRegression model = new OLSMultipleLinearRegression(); model.newSampleData(y, x); TestUtils.assertEquals(model.calculateYVariance(), 3.5, 0); } /** * Verifies that calculateYVariance and calculateResidualVariance return consistent * values with direct variance computation from Y, residuals, respectively. */ protected void checkVarianceConsistency(OLSMultipleLinearRegression model) { // Check Y variance consistency TestUtils.assertEquals(StatUtils.variance(model.getY().toArray()), model.calculateYVariance(), 0); // Check residual variance consistency double[] residuals = model.calculateResiduals().toArray(); RealMatrix X = model.getX(); TestUtils.assertEquals( StatUtils.variance(model.calculateResiduals().toArray()) * (residuals.length - 1), model.calculateErrorVariance() * (X.getRowDimension() - X.getColumnDimension()), 1E-20); } /** * Verifies that setting X and Y separately has the same effect as newSample(X,Y). */ @Test public void testNewSample2() { double[] y = new double[] {1, 2, 3, 4}; double[][] x = new double[][] { {19, 22, 33}, {20, 30, 40}, {25, 35, 45}, {27, 37, 47} }; OLSMultipleLinearRegression regression = new OLSMultipleLinearRegression(); regression.newSampleData(y, x); RealMatrix combinedX = regression.getX().copy(); RealVector combinedY = regression.getY().copy(); regression.newXSampleData(x); regression.newYSampleData(y); Assert.assertEquals(combinedX, regression.getX()); Assert.assertEquals(combinedY, regression.getY()); // No intercept regression.setNoIntercept(true); regression.newSampleData(y, x); combinedX = regression.getX().copy(); combinedY = regression.getY().copy(); regression.newXSampleData(x); regression.newYSampleData(y); Assert.assertEquals(combinedX, regression.getX()); Assert.assertEquals(combinedY, regression.getY()); } @Test(expected=NullArgumentException.class) public void testNewSampleDataYNull() { createRegression().newSampleData(null, new double[][] {}); } @Test(expected=NullArgumentException.class) public void testNewSampleDataXNull() { createRegression().newSampleData(new double[] {}, null); } /* * This is a test based on the Wampler1 data set * http://www.itl.nist.gov/div898/strd/lls/data/Wampler1.shtml */ @Test public void testWampler1() { double[] data = new double[]{ 1, 0, 6, 1, 63, 2, 364, 3, 1365, 4, 3906, 5, 9331, 6, 19608, 7, 37449, 8, 66430, 9, 111111, 10, 177156, 11, 271453, 12, 402234, 13, 579195, 14, 813616, 15, 1118481, 16, 1508598, 17, 2000719, 18, 2613660, 19, 3368421, 20}; OLSMultipleLinearRegression model = new OLSMultipleLinearRegression(); final int nvars = 5; final int nobs = 21; double[] tmp = new double[(nvars + 1) * nobs]; int off = 0; int off2 = 0; for (int i = 0; i < nobs; i++) { tmp[off2] = data[off]; tmp[off2 + 1] = data[off + 1]; tmp[off2 + 2] = tmp[off2 + 1] * tmp[off2 + 1]; tmp[off2 + 3] = tmp[off2 + 1] * tmp[off2 + 2]; tmp[off2 + 4] = tmp[off2 + 1] * tmp[off2 + 3]; tmp[off2 + 5] = tmp[off2 + 1] * tmp[off2 + 4]; off2 += (nvars + 1); off += 2; } model.newSampleData(tmp, nobs, nvars); double[] betaHat = model.estimateRegressionParameters(); TestUtils.assertEquals(betaHat, new double[]{1.0, 1.0, 1.0, 1.0, 1.0, 1.0}, 1E-8); double[] se = model.estimateRegressionParametersStandardErrors(); TestUtils.assertEquals(se, new double[]{0.0, 0.0, 0.0, 0.0, 0.0, 0.0}, 1E-8); TestUtils.assertEquals(1.0, model.calculateRSquared(), 1.0e-10); TestUtils.assertEquals(0, model.estimateErrorVariance(), 1.0e-7); TestUtils.assertEquals(0.00, model.calculateResidualSumOfSquares(), 1.0e-6); return; } /* * This is a test based on the Wampler2 data set * http://www.itl.nist.gov/div898/strd/lls/data/Wampler2.shtml */ @Test public void testWampler2() { double[] data = new double[]{ 1.00000, 0, 1.11111, 1, 1.24992, 2, 1.42753, 3, 1.65984, 4, 1.96875, 5, 2.38336, 6, 2.94117, 7, 3.68928, 8, 4.68559, 9, 6.00000, 10, 7.71561, 11, 9.92992, 12, 12.75603, 13, 16.32384, 14, 20.78125, 15, 26.29536, 16, 33.05367, 17, 41.26528, 18, 51.16209, 19, 63.00000, 20}; OLSMultipleLinearRegression model = new OLSMultipleLinearRegression(); final int nvars = 5; final int nobs = 21; double[] tmp = new double[(nvars + 1) * nobs]; int off = 0; int off2 = 0; for (int i = 0; i < nobs; i++) { tmp[off2] = data[off]; tmp[off2 + 1] = data[off + 1]; tmp[off2 + 2] = tmp[off2 + 1] * tmp[off2 + 1]; tmp[off2 + 3] = tmp[off2 + 1] * tmp[off2 + 2]; tmp[off2 + 4] = tmp[off2 + 1] * tmp[off2 + 3]; tmp[off2 + 5] = tmp[off2 + 1] * tmp[off2 + 4]; off2 += (nvars + 1); off += 2; } model.newSampleData(tmp, nobs, nvars); double[] betaHat = model.estimateRegressionParameters(); TestUtils.assertEquals(betaHat, new double[]{ 1.0, 1.0e-1, 1.0e-2, 1.0e-3, 1.0e-4, 1.0e-5}, 1E-8); double[] se = model.estimateRegressionParametersStandardErrors(); TestUtils.assertEquals(se, new double[]{0.0, 0.0, 0.0, 0.0, 0.0, 0.0}, 1E-8); TestUtils.assertEquals(1.0, model.calculateRSquared(), 1.0e-10); TestUtils.assertEquals(0, model.estimateErrorVariance(), 1.0e-7); TestUtils.assertEquals(0.00, model.calculateResidualSumOfSquares(), 1.0e-6); return; } /* * This is a test based on the Wampler3 data set * http://www.itl.nist.gov/div898/strd/lls/data/Wampler3.shtml */ @Test public void testWampler3() { double[] data = new double[]{ 760, 0, -2042, 1, 2111, 2, -1684, 3, 3888, 4, 1858, 5, 11379, 6, 17560, 7, 39287, 8, 64382, 9, 113159, 10, 175108, 11, 273291, 12, 400186, 13, 581243, 14, 811568, 15, 1121004, 16, 1506550, 17, 2002767, 18, 2611612, 19, 3369180, 20}; OLSMultipleLinearRegression model = new OLSMultipleLinearRegression(); final int nvars = 5; final int nobs = 21; double[] tmp = new double[(nvars + 1) * nobs]; int off = 0; int off2 = 0; for (int i = 0; i < nobs; i++) { tmp[off2] = data[off]; tmp[off2 + 1] = data[off + 1]; tmp[off2 + 2] = tmp[off2 + 1] * tmp[off2 + 1]; tmp[off2 + 3] = tmp[off2 + 1] * tmp[off2 + 2]; tmp[off2 + 4] = tmp[off2 + 1] * tmp[off2 + 3]; tmp[off2 + 5] = tmp[off2 + 1] * tmp[off2 + 4]; off2 += (nvars + 1); off += 2; } model.newSampleData(tmp, nobs, nvars); double[] betaHat = model.estimateRegressionParameters(); TestUtils.assertEquals(betaHat, new double[]{ 1.0, 1.0, 1.0, 1.0, 1.0, 1.0}, 1E-8); double[] se = model.estimateRegressionParametersStandardErrors(); TestUtils.assertEquals(se, new double[]{2152.32624678170, 2363.55173469681, 779.343524331583, 101.475507550350, 5.64566512170752, 0.112324854679312}, 1E-8); // TestUtils.assertEquals(.999995559025820, model.calculateRSquared(), 1.0e-10); TestUtils.assertEquals(5570284.53333333, model.estimateErrorVariance(), 1.0e-6); TestUtils.assertEquals(83554268.0000000, model.calculateResidualSumOfSquares(), 1.0e-5); return; } /* * This is a test based on the Wampler4 data set * http://www.itl.nist.gov/div898/strd/lls/data/Wampler4.shtml */ @Test public void testWampler4() { double[] data = new double[]{ 75901, 0, -204794, 1, 204863, 2, -204436, 3, 253665, 4, -200894, 5, 214131, 6, -185192, 7, 221249, 8, -138370, 9, 315911, 10, -27644, 11, 455253, 12, 197434, 13, 783995, 14, 608816, 15, 1370781, 16, 1303798, 17, 2205519, 18, 2408860, 19, 3444321, 20}; OLSMultipleLinearRegression model = new OLSMultipleLinearRegression(); final int nvars = 5; final int nobs = 21; double[] tmp = new double[(nvars + 1) * nobs]; int off = 0; int off2 = 0; for (int i = 0; i < nobs; i++) { tmp[off2] = data[off]; tmp[off2 + 1] = data[off + 1]; tmp[off2 + 2] = tmp[off2 + 1] * tmp[off2 + 1]; tmp[off2 + 3] = tmp[off2 + 1] * tmp[off2 + 2]; tmp[off2 + 4] = tmp[off2 + 1] * tmp[off2 + 3]; tmp[off2 + 5] = tmp[off2 + 1] * tmp[off2 + 4]; off2 += (nvars + 1); off += 2; } model.newSampleData(tmp, nobs, nvars); double[] betaHat = model.estimateRegressionParameters(); TestUtils.assertEquals(betaHat, new double[]{ 1.0, 1.0, 1.0, 1.0, 1.0, 1.0}, 1E-6); double[] se = model.estimateRegressionParametersStandardErrors(); TestUtils.assertEquals(se, new double[]{215232.624678170, 236355.173469681, 77934.3524331583, 10147.5507550350, 564.566512170752, 11.2324854679312}, 1E-8); TestUtils.assertEquals(.957478440825662, model.calculateRSquared(), 1.0e-10); TestUtils.assertEquals(55702845333.3333, model.estimateErrorVariance(), 1.0e-4); TestUtils.assertEquals(835542680000.000, model.calculateResidualSumOfSquares(), 1.0e-3); return; } /** * Anything requiring beta calculation should advertise SME. */ @Test(expected=org.apache.commons.math4.linear.SingularMatrixException.class) public void testSingularCalculateBeta() { OLSMultipleLinearRegression model = new OLSMultipleLinearRegression(); model.newSampleData(new double[] {1, 2, 3, 1, 2, 3, 1, 2, 3}, 3, 2); model.calculateBeta(); } @Test public void testNoSSTOCalculateRsquare() { OLSMultipleLinearRegression model = new OLSMultipleLinearRegression(); model.newSampleData(new double[] {1, 2, 3, 1, 7, 8, 1, 10, 12}, 3, 2); Assert.assertTrue(Double.isNaN(model.calculateRSquared())); } @Test(expected=NullPointerException.class) public void testNoDataNPECalculateBeta() { OLSMultipleLinearRegression model = new OLSMultipleLinearRegression(); model.calculateBeta(); } @Test(expected=NullPointerException.class) public void testNoDataNPECalculateHat() { OLSMultipleLinearRegression model = new OLSMultipleLinearRegression(); model.calculateHat(); } @Test(expected=NullPointerException.class) public void testNoDataNPESSTO() { OLSMultipleLinearRegression model = new OLSMultipleLinearRegression(); model.calculateTotalSumOfSquares(); } }