public void GcdLcmTest()
        {
            long a = 3457832408;
            long b = 56789309233;

            Assert.IsTrue(AdvancedIntegerMath.GCF(a, b) * AdvancedIntegerMath.LCM(a, b) == a * b);
        }
示例#2
0
        public void TwoSampleKolmogorovNullDistributionTest()
        {
            ContinuousDistribution population = new ExponentialDistribution();

            int[] sizes = new int[] { 23, 30, 175 };

            foreach (int na in sizes)
            {
                foreach (int nb in sizes)
                {
                    Console.WriteLine("{0} {1}", na, nb);

                    Sample d = new Sample();
                    ContinuousDistribution nullDistribution = null;
                    for (int i = 0; i < 128; i++)
                    {
                        Sample a = TestUtilities.CreateSample(population, na, 31415 + na + i);
                        Sample b = TestUtilities.CreateSample(population, nb, 27182 + nb + i);

                        TestResult r = Sample.KolmogorovSmirnovTest(a, b);
                        d.Add(r.Statistic);
                        nullDistribution = r.Distribution;
                    }
                    // Only do full KS test if the number of bins is larger than the sample size, otherwise we are going to fail
                    // because the KS test detects the granularity of the distribution
                    TestResult mr = d.KolmogorovSmirnovTest(nullDistribution);
                    Console.WriteLine(mr.LeftProbability);
                    if (AdvancedIntegerMath.LCM(na, nb) > d.Count)
                    {
                        Assert.IsTrue(mr.LeftProbability < 0.99);
                    }
                    // But always test that mean and standard deviation are as expected
                    Console.WriteLine("{0} {1}", nullDistribution.Mean, d.PopulationMean.ConfidenceInterval(0.99));
                    Assert.IsTrue(d.PopulationMean.ConfidenceInterval(0.99).ClosedContains(nullDistribution.Mean));
                    Console.WriteLine("{0} {1}", nullDistribution.StandardDeviation, d.PopulationStandardDeviation.ConfidenceInterval(0.99));
                    Assert.IsTrue(d.PopulationStandardDeviation.ConfidenceInterval(0.99).ClosedContains(nullDistribution.StandardDeviation));
                    Console.WriteLine("{0} {1}", nullDistribution.CentralMoment(3), d.PopulationCentralMoment(3).ConfidenceInterval(0.99));
                    //Assert.IsTrue(d.PopulationMomentAboutMean(3).ConfidenceInterval(0.99).ClosedContains(nullDistribution.MomentAboutMean(3)));

                    //Console.WriteLine("m {0} {1}", nullDistribution.Mean, d.PopulationMean);
                }
            }
        }
示例#3
0
        public void TwoSampleKolmogorovNullDistributionTest()
        {
            Random rng = new Random(4);
            ContinuousDistribution population = new ExponentialDistribution();

            int[] sizes = new int[] { 23, 30, 175 };

            foreach (int na in sizes)
            {
                foreach (int nb in sizes)
                {
                    Sample d = new Sample();
                    ContinuousDistribution nullDistribution = null;
                    for (int i = 0; i < 128; i++)
                    {
                        List <double> a = TestUtilities.CreateDataSample(rng, population, na).ToList();
                        List <double> b = TestUtilities.CreateDataSample(rng, population, nb).ToList();

                        TestResult r = Univariate.KolmogorovSmirnovTest(a, b);
                        d.Add(r.Statistic.Value);
                        nullDistribution = r.Statistic.Distribution;
                    }

                    // Only do full KS test if the number of bins is larger than the sample size, otherwise we are going to fail
                    // because the KS test detects the granularity of the distribution.
                    TestResult mr = d.KolmogorovSmirnovTest(nullDistribution);
                    if (AdvancedIntegerMath.LCM(na, nb) > d.Count)
                    {
                        Assert.IsTrue(mr.Probability > 0.01);
                    }
                    // But always test that mean and standard deviation are as expected
                    Assert.IsTrue(d.PopulationMean.ConfidenceInterval(0.99).ClosedContains(nullDistribution.Mean));
                    Assert.IsTrue(d.PopulationStandardDeviation.ConfidenceInterval(0.99).ClosedContains(nullDistribution.StandardDeviation));
                    // This test is actually a bit sensitive, probably because the discrete-ness of the underlying distribution
                    // and the inaccuracy of the asymptotic approximation for intermediate sample size make strict comparisons iffy.
                }
            }
        }