Accord.Tests.Statistics.KernelDiscriminantAnalysisTest.ClassifyTest C# (CSharp) Method

ClassifyTest() private method

private ClassifyTest ( ) : void
return void
        public void ClassifyTest()
        {
            // Create some sample input data instances. This is the same
            // data used in the Gutierrez-Osuna's example available on:
            // http://research.cs.tamu.edu/prism/lectures/pr/pr_l10.pdf

            double[][] inputs = 
            {
                // Class 0
                new double[] {  4,  1 }, 
                new double[] {  2,  4 },
                new double[] {  2,  3 },
                new double[] {  3,  6 },
                new double[] {  4,  4 },

                // Class 1
                new double[] {  9, 10 },
                new double[] {  6,  8 },
                new double[] {  9,  5 },
                new double[] {  8,  7 },
                new double[] { 10,  8 }
            };

            int[] output = 
            {
                0, 0, 0, 0, 0, // The first five are from class 0
                1, 1, 1, 1, 1  // The last five are from class 1
            };

            // Now we can chose a kernel function to 
            // use, such as a linear kernel function.
            IKernel kernel = new Linear();

            // Then, we will create a KDA using this linear kernel.
            var kda = new KernelDiscriminantAnalysis(inputs, output, kernel);

            kda.Compute(); // Compute the analysis


            // Now we can project the data into KDA space:
            double[][] projection = kda.Transform(inputs);

            double[][] classifierProjection = kda.Classifier.First.Transform(inputs);
            Assert.IsTrue(projection.IsEqual(classifierProjection));

            // Or perform classification using:
            int[] results = kda.Classify(inputs);

            string str = projection.ToCSharp();

            double[][] expected = new double[][] {
                new double[] { 80.7607049998409, -5.30485371541545E-06, 6.61304584781419E-06, 4.52807990036774E-06, -3.44409628150189E-06, 3.69094504515388E-06, -1.33641000168438E-05, -0.000132874977040842, -0.000261921590627878, 1.22137997452386 },
                new double[] { 67.6629612351861, 6.80622743409742E-06, -8.48466262226566E-06, -5.80961187779394E-06, 4.4188405141643E-06, -4.73555212510135E-06, 1.71463925084936E-05, 0.000170481102685471, 0.000336050342774286, -1.5670535522193 },
                new double[] { 59.8679301679674, 4.10375477777336E-06, -5.11575246520124E-06, -3.50285421113483E-06, 2.66430090034575E-06, -2.85525936627451E-06, 1.03382660725515E-05, 0.00010279007663172, 0.000202618589039361, -0.944841112367518 },
                new double[] { 101.494441852779, 1.02093411395998E-05, -1.27269939227403E-05, -8.71441780958548E-06, 6.62826077091339E-06, -7.10332818965043E-06, 2.57195887591877E-05, 0.000255721654028207, 0.000504075514164981, -2.35058032832894 },
                new double[] { 104.145798201497, 2.80256425000402E-06, -3.49368461627364E-06, -2.39219308895144E-06, 1.81952256639306E-06, -1.94993321933623E-06, 7.06027928387698E-06, 7.01981011275166E-05, 0.000138373670580449, -0.645257345031474 },
                new double[] { 242.123077020588, 9.00824221261587E-06, -1.12297005614437E-05, -7.689192102589E-06, 5.84846541151762E-06, -6.26764250277745E-06, 2.26937548148953E-05, 0.000225636753569347, 0.000444772512580016, -2.07404146617259 },
                new double[] { 171.808759436683, 9.60879168943052E-06, -1.19783472456447E-05, -8.2018049702981E-06, 6.23836308744075E-06, -6.68548535731617E-06, 2.42066717959233E-05, 0.000240679203812988, 0.000474424013376051, -2.21231089725078 },
                new double[] { 203.147921684494, -4.5041210583463E-06, 5.61485022387842E-06, 3.8445962076139E-06, -2.92423269243614E-06, 3.13382127359318E-06, -1.13468773577097E-05, -0.000112818376692303, -0.000222386256126583, 1.03702073308629 },
                new double[] { 200.496565335776, 2.90265583302585E-06, -3.61845908969372E-06, -2.47762852723099E-06, 1.88450551963371E-06, -2.01957368695105E-06, 7.31243213181187E-06, 7.27051762225983E-05, 0.000143315587422421, -0.668302250211177 },
                new double[] { 244.774433369306, 1.60146531058558E-06, -1.99639123366069E-06, -1.36696743169296E-06, 1.0397271781315E-06, -1.11424755644407E-06, 4.03444536090092E-06, 4.01132006970784E-05, 7.90706689741683E-05, -0.368718482875124 } 
            };

            Assert.IsTrue(expected.IsEqual(projection, 1e-6));

            // Test the classify method
            for (int i = 0; i < 5; i++)
            {
                int actual = results[i];
                Assert.AreEqual(0, actual);
            }

            for (int i = 5; i < 10; i++)
            {
                int actual = results[i];
                Assert.AreEqual(1, actual);
            }
        }