@Test public void testGradientSanity() throws IOException { // given RealValueFileEventStream rvfes1 = new RealValueFileEventStream( "src/test/resources/data/opennlp/maxent/real-valued-weights-training-data.txt", "UTF-8"); testDataIndexer.index(rvfes1); NegLogLikelihood objectFunction = new NegLogLikelihood(testDataIndexer); // when double[] initial = objectFunction.getInitialPoint(); double[] gradientAtInitial = objectFunction.gradientAt(initial); // then Assert.assertNotNull(gradientAtInitial); }
@Test public void testGradientAtInitialPoint() throws IOException { // given RealValueFileEventStream rvfes1 = new RealValueFileEventStream( "src/test/resources/data/opennlp/maxent/real-valued-weights-training-data.txt", "UTF-8"); testDataIndexer.index(rvfes1); NegLogLikelihood objectFunction = new NegLogLikelihood(testDataIndexer); // when double[] gradientAtInitialPoint = objectFunction.gradientAt(objectFunction.getInitialPoint()); double[] expectedGradient = new double[] { -9.0, -14.0, -17.0, 20.0, 8.5, 9.0, 14.0, 17.0, -20.0, -8.5 }; // then Assert.assertTrue(compareDoubleArray(expectedGradient, gradientAtInitialPoint, testDataIndexer, TOLERANCE01)); }
@Test public void testGradientAtNonInitialPoint() throws IOException { // given RealValueFileEventStream rvfes1 = new RealValueFileEventStream( "src/test/resources/data/opennlp/maxent/real-valued-weights-training-data.txt", "UTF-8"); testDataIndexer.index(rvfes1); NegLogLikelihood objectFunction = new NegLogLikelihood(testDataIndexer); // when double[] nonInitialPoint = new double[] { 0.2, 0.5, 0.2, 0.5, 0.2, 0.5, 0.2, 0.5, 0.2, 0.5 }; double[] gradientAtNonInitialPoint = objectFunction.gradientAt(dealignDoubleArrayForTestData(nonInitialPoint, testDataIndexer.getPredLabels(), testDataIndexer.getOutcomeLabels())); double[] expectedGradient = new double[] { -12.755042847945553, -21.227127506102434, -72.57790706276435, 38.03525795198456, 15.348650889354925, 12.755042847945557, 21.22712750610244, 72.57790706276438, -38.03525795198456, -15.348650889354925 }; // then Assert.assertTrue(compareDoubleArray(expectedGradient, gradientAtNonInitialPoint, testDataIndexer, TOLERANCE01)); }