public void learn_test()
{
#region doc_learn
Accord.Math.Random.Generator.Seed = 0;
// Example regression problem. Suppose we are trying
// to model the following equation: f(x, y) = 2x + y
double[][] inputs = // (x, y)
{
new double[] { 0, 1 }, // 2*0 + 1 = 1
new double[] { 4, 3 }, // 2*4 + 3 = 11
new double[] { 8, -8 }, // 2*8 - 8 = 8
new double[] { 2, 2 }, // 2*2 + 2 = 6
new double[] { 6, 1 }, // 2*6 + 1 = 13
new double[] { 5, 4 }, // 2*5 + 4 = 14
new double[] { 9, 1 }, // 2*9 + 1 = 19
new double[] { 1, 6 }, // 2*1 + 6 = 8
};
double[] outputs = // f(x, y)
{
1, 11, 8, 6, 13, 14, 19, 8
};
// Create the sequential minimal optimization teacher
var learn = new SequentialMinimalOptimizationRegression<Polynomial>()
{
Kernel = new Polynomial(2), // Polynomial Kernel of 2nd degree
Complexity = 100
};
// Run the learning algorithm
SupportVectorMachine<Polynomial> svm = learn.Learn(inputs, outputs);
// Compute the predicted scores
double[] predicted = svm.Score(inputs);
// Compute the error between the expected and predicted
double error = new SquareLoss(outputs).Loss(predicted);
// Compute the answer for one particular example
double fxy = svm.Score(inputs[0]); // 1.0003849827673186
#endregion
Assert.AreEqual(1.0, fxy, 1e-2);
for (int i = 0; i < outputs.Length; i++)
Assert.AreEqual(outputs[i], predicted[i], 1e-2);
}
}