public void ValidateCumulativeDistribution(double mu, double sigma, double x, double f) { var n = new LogNormal(mu, sigma); AssertHelpers.AlmostEqual(f, n.CumulativeDistribution(x), 8); AssertHelpers.AlmostEqual(f, LogNormal.CDF(mu, sigma, x), 8); }
public void ValidateCumulativeDistribution( [Values(-0.100000, -0.100000, -0.100000, -0.100000, -0.100000, -0.100000, -0.100000, -0.100000, -0.100000, -0.100000, 1.500000, 1.500000, 1.500000, 1.500000, 1.500000, 1.500000, 1.500000, 1.500000, 1.500000, 2.500000, 2.500000, 2.500000, 2.500000, 2.500000, 2.500000, 2.500000, 2.500000, 2.500000)] double mu, [Values(0.100000, 0.100000, 0.100000, 0.100000, 1.500000, 1.500000, 1.500000, 2.500000, 2.500000, 2.500000, 0.100000, 0.100000, 0.100000, 1.500000, 1.500000, 1.500000, 2.500000, 2.500000, 2.500000, 0.100000, 0.100000, 0.100000, 1.500000, 1.500000, 1.500000, 2.500000, 2.500000, 2.500000)] double sigma, [Values(-0.100000, 0.100000, 0.500000, 0.800000, 0.100000, 0.500000, 0.800000, 0.100000, 0.500000, 0.800000, 0.100000, 0.500000, 0.800000, 0.100000, 0.500000, 0.800000, 0.100000, 0.500000, 0.800000, 0.100000, 0.500000, 0.800000, 0.100000, 0.500000, 0.800000, 0.100000, 0.500000, 0.800000)] double x, [Values(0.0, 0.0, 0.0000000015011556178148777579869633555518882664666520593658, 0.10908001076375810900224507908874442583171381706127, 0.070999149762464508991968731574953594549291668468349, 0.34626224992888089297789445771047690175505847991946, 0.46728530589487698517090261668589508746353129242404, 0.18914969879695093477606645992572208111152994999076, 0.40622798321378106125020505907901206714868922279347, 0.48035707589956665425068652807400957345208517749893, 0.0, 0.0, 0.0, 0.005621455876973168709588070988239748831823850202953, 0.07185716187918271235246980951571040808235628115265, 0.12532699044614938400496547188720940854423187977236, 0.064125647996943514411570834861724406903677144126117, 0.19017302281590810871719754032332631806011441356498, 0.24533064397555500690927047163085419096928289095201, 0.0, 0.0, 0.0, 0.00068304052220788502001572635016579586444611070077399, 0.016636862816580533038130583128179878924863968664206, 0.034729001282904174941366974418836262996834852343018, 0.027363708266690978870139978537188410215717307180775, 0.10075543423327634536450625420610429181921642201567, 0.13802019192453118732001307556787218421918336849121)] double f) { var n = new LogNormal(mu, sigma); AssertHelpers.AlmostEqual(f, n.CumulativeDistribution(x), 8); }
public void ValidateCumulativeDistribution(double mu, double sigma, double x, double f) { var n = new LogNormal(mu, sigma); AssertHelpers.AlmostEqual(f, n.CumulativeDistribution(x), 8); }
/// <summary> /// Run example /// </summary> /// <a href="http://en.wikipedia.org/wiki/Log-normal_distribution">LogNormal distribution</a> public void Run() { // 1. Initialize the new instance of the LogNormal distribution class with parameters Mu = 0, Sigma = 1 var logNormal = new LogNormal(0, 1); Console.WriteLine(@"1. Initialize the new instance of the LogNormal distribution class with parameters Mu = {0}, Sigma = {1}", logNormal.Mu, logNormal.Sigma); Console.WriteLine(); // 2. Distributuion properties: Console.WriteLine(@"2. {0} distributuion properties:", logNormal); // Cumulative distribution function Console.WriteLine(@"{0} - Сumulative distribution at location '0.3'", logNormal.CumulativeDistribution(0.3).ToString(" #0.00000;-#0.00000")); // Probability density Console.WriteLine(@"{0} - Probability density at location '0.3'", logNormal.Density(0.3).ToString(" #0.00000;-#0.00000")); // Log probability density Console.WriteLine(@"{0} - Log probability density at location '0.3'", logNormal.DensityLn(0.3).ToString(" #0.00000;-#0.00000")); // Entropy Console.WriteLine(@"{0} - Entropy", logNormal.Entropy.ToString(" #0.00000;-#0.00000")); // Largest element in the domain Console.WriteLine(@"{0} - Largest element in the domain", logNormal.Maximum.ToString(" #0.00000;-#0.00000")); // Smallest element in the domain Console.WriteLine(@"{0} - Smallest element in the domain", logNormal.Minimum.ToString(" #0.00000;-#0.00000")); // Mean Console.WriteLine(@"{0} - Mean", logNormal.Mean.ToString(" #0.00000;-#0.00000")); // Median Console.WriteLine(@"{0} - Median", logNormal.Median.ToString(" #0.00000;-#0.00000")); // Mode Console.WriteLine(@"{0} - Mode", logNormal.Mode.ToString(" #0.00000;-#0.00000")); // Variance Console.WriteLine(@"{0} - Variance", logNormal.Variance.ToString(" #0.00000;-#0.00000")); // Standard deviation Console.WriteLine(@"{0} - Standard deviation", logNormal.StdDev.ToString(" #0.00000;-#0.00000")); // Skewness Console.WriteLine(@"{0} - Skewness", logNormal.Skewness.ToString(" #0.00000;-#0.00000")); Console.WriteLine(); // 3. Generate 10 samples Console.WriteLine(@"3. Generate 10 samples"); for (var i = 0; i < 10; i++) { Console.Write(logNormal.Sample().ToString("N05") + @" "); } Console.WriteLine(); Console.WriteLine(); // 4. Generate 100000 samples of the LogNormal(0, 1) distribution and display histogram Console.WriteLine(@"4. Generate 100000 samples of the LogNormal(0, 1) distribution and display histogram"); var data = new double[100000]; for (var i = 0; i < data.Length; i++) { data[i] = logNormal.Sample(); } ConsoleHelper.DisplayHistogram(data); Console.WriteLine(); // 5. Generate 100000 samples of the LogNormal(0, 0.5) distribution and display histogram Console.WriteLine(@"5. Generate 100000 samples of the LogNormal(0, 0.5) distribution and display histogram"); logNormal.Sigma = 0.5; for (var i = 0; i < data.Length; i++) { data[i] = logNormal.Sample(); } ConsoleHelper.DisplayHistogram(data); Console.WriteLine(); // 6. Generate 100000 samples of the LogNormal(5, 0.25) distribution and display histogram Console.WriteLine(@"6. Generate 100000 samples of the LogNormal(5, 0.25) distribution and display histogram"); logNormal.Mu = 5; logNormal.Sigma = 0.25; for (var i = 0; i < data.Length; i++) { data[i] = logNormal.Sample(); } ConsoleHelper.DisplayHistogram(data); }