/* * 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.descriptive; import java.util.ArrayList; import java.util.List; import org.apache.commons.math4.TestUtils; import org.apache.commons.math4.stat.descriptive.DescriptiveStatistics; import org.apache.commons.math4.util.FastMath; import org.junit.Assert; import org.junit.Test; /** * Test cases for the {@link ListUnivariateImpl} class. * */ public final class ListUnivariateImplTest { private double one = 1; private float two = 2; private int three = 3; private double mean = 2; private double sumSq = 18; private double sum = 8; private double var = 0.666666666666666666667; private double std = FastMath.sqrt(var); private double n = 4; private double min = 1; private double max = 3; private double tolerance = 10E-15; /** test stats */ @Test public void testStats() { List<Object> externalList = new ArrayList<>(); DescriptiveStatistics u = new ListUnivariateImpl( externalList ); Assert.assertEquals("total count",0,u.getN(),tolerance); u.addValue(one); u.addValue(two); u.addValue(two); u.addValue(three); Assert.assertEquals("N",n,u.getN(),tolerance); Assert.assertEquals("sum",sum,u.getSum(),tolerance); Assert.assertEquals("sumsq",sumSq,u.getSumsq(),tolerance); Assert.assertEquals("var",var,u.getVariance(),tolerance); Assert.assertEquals("std",std,u.getStandardDeviation(),tolerance); Assert.assertEquals("mean",mean,u.getMean(),tolerance); Assert.assertEquals("min",min,u.getMin(),tolerance); Assert.assertEquals("max",max,u.getMax(),tolerance); u.clear(); Assert.assertEquals("total count",0,u.getN(),tolerance); } @Test public void testN0andN1Conditions() { List<Object> list = new ArrayList<>(); DescriptiveStatistics u = new ListUnivariateImpl( list ); Assert.assertTrue("Mean of n = 0 set should be NaN", Double.isNaN( u.getMean() ) ); Assert.assertTrue("Standard Deviation of n = 0 set should be NaN", Double.isNaN( u.getStandardDeviation() ) ); Assert.assertTrue("Variance of n = 0 set should be NaN", Double.isNaN(u.getVariance() ) ); list.add( Double.valueOf(one)); Assert.assertTrue( "Mean of n = 1 set should be value of single item n1", u.getMean() == one); Assert.assertTrue( "StdDev of n = 1 set should be zero, instead it is: " + u.getStandardDeviation(), u.getStandardDeviation() == 0); Assert.assertTrue( "Variance of n = 1 set should be zero", u.getVariance() == 0); } @Test public void testSkewAndKurtosis() { DescriptiveStatistics u = new DescriptiveStatistics(); double[] testArray = { 12.5, 12, 11.8, 14.2, 14.9, 14.5, 21, 8.2, 10.3, 11.3, 14.1, 9.9, 12.2, 12, 12.1, 11, 19.8, 11, 10, 8.8, 9, 12.3 }; for( int i = 0; i < testArray.length; i++) { u.addValue( testArray[i]); } Assert.assertEquals("mean", 12.40455, u.getMean(), 0.0001); Assert.assertEquals("variance", 10.00236, u.getVariance(), 0.0001); Assert.assertEquals("skewness", 1.437424, u.getSkewness(), 0.0001); Assert.assertEquals("kurtosis", 2.37719, u.getKurtosis(), 0.0001); } @Test public void testProductAndGeometricMean() { ListUnivariateImpl u = new ListUnivariateImpl(new ArrayList<>()); u.setWindowSize(10); u.addValue( 1.0 ); u.addValue( 2.0 ); u.addValue( 3.0 ); u.addValue( 4.0 ); Assert.assertEquals( "Geometric mean not expected", 2.213364, u.getGeometricMean(), 0.00001 ); // Now test rolling - StorelessDescriptiveStatistics should discount the contribution // of a discarded element for( int i = 0; i < 10; i++ ) { u.addValue( i + 2 ); } // Values should be (2,3,4,5,6,7,8,9,10,11) Assert.assertEquals( "Geometric mean not expected", 5.755931, u.getGeometricMean(), 0.00001 ); } /** test stats */ @Test public void testSerialization() { DescriptiveStatistics u = new ListUnivariateImpl(); Assert.assertEquals("total count",0,u.getN(),tolerance); u.addValue(one); u.addValue(two); DescriptiveStatistics u2 = (DescriptiveStatistics)TestUtils.serializeAndRecover(u); u2.addValue(two); u2.addValue(three); Assert.assertEquals("N",n,u2.getN(),tolerance); Assert.assertEquals("sum",sum,u2.getSum(),tolerance); Assert.assertEquals("sumsq",sumSq,u2.getSumsq(),tolerance); Assert.assertEquals("var",var,u2.getVariance(),tolerance); Assert.assertEquals("std",std,u2.getStandardDeviation(),tolerance); Assert.assertEquals("mean",mean,u2.getMean(),tolerance); Assert.assertEquals("min",min,u2.getMin(),tolerance); Assert.assertEquals("max",max,u2.getMax(),tolerance); u2.clear(); Assert.assertEquals("total count",0,u2.getN(),tolerance); } }