Example #1
0
        public static double TrainNetworks(SupportVectorMachine network, MarketMLDataSet training)
        {
            // train the neural network
            SVMTrain trainMain = new SVMTrain(network, training);

            StopTrainingStrategy stop = new StopTrainingStrategy(0.0001, 200);

            trainMain.AddStrategy(stop);

            var sw = new Stopwatch();

            sw.Start();
            while (!stop.ShouldStop())
            {
                trainMain.PreIteration();

                trainMain.Iteration();
                trainMain.PostIteration();

                Console.WriteLine(@"Iteration #:" + trainMain.IterationNumber + @" Error:" + trainMain.Error);
            }
            sw.Stop();
            Console.WriteLine("SVM Trained in :" + sw.ElapsedMilliseconds + "For error:" + trainMain.Error + " Iterated:" + trainMain.IterationNumber);
            return(trainMain.Error);
        }
Example #2
0
        public static double train(SupportVectorMachine network, IMLDataSet training)
        {
            SVMTrain train = new SVMTrain(network, training);

            train.Iteration();
            return(train.Error);
        }
Example #3
0
        /// <summary>
        /// Create a SVM trainer.
        /// </summary>
        ///
        /// <param name="method">The method to use.</param>
        /// <param name="training">The training data to use.</param>
        /// <param name="argsStr">The arguments to use.</param>
        /// <returns>The newly created trainer.</returns>
        public IMLTrain Create(IMLMethod method,
                               IMLDataSet training, String argsStr)
        {
            if (!(method is SupportVectorMachine))
            {
                throw new EncogError(
                          "SVM Train training cannot be used on a method of type: "
                          + method.GetType().FullName);
            }

            double defaultGamma = 1.0d / ((SupportVectorMachine)method).InputCount;
            double defaultC     = 1.0d;

            IDictionary <String, String> args = ArchitectureParse.ParseParams(argsStr);
            var    holder = new ParamsHolder(args);
            double gamma  = holder.GetDouble(MLTrainFactory.PropertyGamma,
                                             false, defaultGamma);
            double c = holder.GetDouble(MLTrainFactory.PropertyC, false,
                                        defaultC);

            var result = new SVMTrain((SupportVectorMachine)method, training);

            result.Gamma = gamma;
            result.C     = c;
            return(result);
        }
Example #4
0
        /// <summary>
        /// Trains a random trainer.
        /// </summary>
        /// <param name="inputs">The inputs.</param>
        /// <param name="predictWindow">The predict window.</param>
        public static void RandomTrainerMethod(int inputs, int predictWindow)
        {
            double[]       firstinput   = MakeInputs(inputs);
            double[]       SecondInput  = MakeInputs(inputs);
            double[]       ThirdInputs  = MakeInputs(inputs);
            double[]       FourthInputs = MakeInputs(inputs);
            var            pair         = SuperUtilsTrainer.ProcessPairs(firstinput, FourthInputs, inputs, predictWindow);
            var            pair2        = SuperUtilsTrainer.ProcessPairs(SecondInput, FourthInputs, inputs, predictWindow);
            var            pair3        = SuperUtilsTrainer.ProcessPairs(ThirdInputs, FourthInputs, inputs, predictWindow);
            var            pair4        = SuperUtilsTrainer.ProcessPairs(FourthInputs, FourthInputs, inputs, predictWindow);
            BasicMLDataSet SuperSet     = new BasicMLDataSet();

            SuperSet.Add(pair);
            SuperSet.Add(pair2);
            SuperSet.Add(pair3);
            SuperSet.Add(pair4);

            SupportVectorMachine machine = Create(SuperSet, inputs);
            SVMTrain             train   = new SVMTrain(machine, SuperSet);

            ///  var network = (BasicNetwork)CreateEval.CreateElmanNetwork(SuperSet.InputSize, SuperSet.IdealSize);
            //double error = CreateEval.TrainNetworks(machine, SuperSet);

            TrainSVM(train, machine);

            //Lets create an evaluation.
            // Console.WriteLine(@"Last error rate on random trainer:" + error);
        }
Example #5
0
        protected ProbabilitySupportVectorMachine TrainSVM(double C, double gamma, List <ISample> trainingSamples, Func <ISample, double> idealFunction)
        {
            // duplicate the training dataset for better cross validation by LIBSVM probability generator (see LIBSVM documentation)
            List <double[]> inputSamples = trainingSamples.Select(sample => sample.GetDimensions()).ToList();

            inputSamples.AddRange(trainingSamples.Select(sample => sample.GetDimensions()));

            // account for imposter samples (identifier not in identifierMap)
            List <double[]> outputSamples = trainingSamples.Select(sample => new double[] { idealFunction.Invoke(sample) }).ToList();

            outputSamples.AddRange(trainingSamples.Select(sample => new double[] { idealFunction.Invoke(sample) }));

            double[][] INPUT = inputSamples.ToArray();
            double[][] IDEAL = outputSamples.ToArray();

            // train the SVM classifier with the provided data
            IMLDataSet trainingData = new BasicMLDataSet(INPUT, IDEAL);

            ProbabilitySupportVectorMachine svmNetwork = new ProbabilitySupportVectorMachine(trainingSamples[0].GetDimensionCount(), false, 0.00000001);

            // train the SVM classifier with the provided C and gamma
            SVMTrain trainedSVM = new SVMTrain(svmNetwork, trainingData)
            {
                Fold  = 0,
                Gamma = gamma,
                C     = C
            };

            trainedSVM.Iteration();

            Console.WriteLine("SVM training error: " + trainedSVM.Error);
            return(svmNetwork);
        }
Example #6
0
        private static SupportVectorMachine Create(IMLDataSet theset, int inputs)
        {
            IMLDataSet           training = new BasicMLDataSet(theset);
            SupportVectorMachine result   = new SupportVectorMachine(inputs, SVMType.EpsilonSupportVectorRegression, KernelType.Sigmoid);
            SVMTrain             train    = new SVMTrain(result, training);

            train.Iteration();
            return(result);
        }
Example #7
0
        private SupportVectorMachine Create()
        {
            IMLDataSet           training = new BasicMLDataSet(XOR.XORInput, XOR.XORIdeal);
            SupportVectorMachine result   = new SupportVectorMachine(2, SVMType.EpsilonSupportVectorRegression, KernelType.RadialBasisFunction);
            SVMTrain             train    = new SVMTrain(result, training);

            train.Iteration();
            return(result);
        }
Example #8
0
        /// <summary>
        /// Train the network, to a specific error, send the output to the console.
        /// </summary>
        /// <param name="method">The model to train.</param>
        /// <param name="trainingSet">The training set to use.</param>
        /// <param name="error">The error level to train to.</param>
        public static void TrainToError(IMLMethod method,
                                        IMLDataSet trainingSet, double error)
        {
            IMLTrain train;

            if (method is SupportVectorMachine)
            {
                train = new SVMTrain((SupportVectorMachine)method, trainingSet);
            }
            if (method is FreeformNetwork)
            {
                train = new FreeformResilientPropagation((FreeformNetwork)method, trainingSet);
            }
            else
            {
                train = new ResilientPropagation((IContainsFlat)method, trainingSet);
            }
            TrainToError(train, error);
        }
Example #9
0
        public static double TrainSVM(SVMTrain train, SupportVectorMachine machine)
        {
            StopTrainingStrategy stop = new StopTrainingStrategy(0.0001, 200);

            train.AddStrategy(stop);
            var sw = new Stopwatch();

            sw.Start();
            while (!stop.ShouldStop())
            {
                train.PreIteration();

                train.Iteration();
                train.PostIteration();
                Console.WriteLine(@"Iteration #:" + train.IterationNumber + @" Error:" + train.Error + " Gamma:" + train.Gamma);
            }
            sw.Stop();
            Console.WriteLine(@"SVM Trained in :" + sw.ElapsedMilliseconds);
            return(train.Error);
        }
Example #10
0
            public static void train(SupportVectorMachine network, IMLDataSet training)
            {
                SVMTrain train = new SVMTrain(network, training);

                train.Iteration();
            }
        public void TestSOM2()
        {
            // create the training set
            IMLDataSet training = new BasicMLDataSet(
                SOMInput2, null);

            // Create the neural network.
            var network = new SOMNetwork(4,4);

            var train = new BasicTrainSOM(network, 0.01,
                                       training, new NeighborhoodSingle()) { ForceWinner = true };

            int iteration = 0;

            for (iteration = 0; iteration <= 1000; iteration++)
            {
                train.Iteration();
            }

            IMLData data1 = new BasicMLData(
                SOMInput2[2]);
            IMLData data2 = new BasicMLData(
                SOMInput2[0]);

            IMLData data3 = new BasicMLData(
               SOMInput2[1]);
            IMLData data4 = new BasicMLData(
                SOMInput2[3]);

            int result1 = network.Classify(data1);
            int result2 = network.Classify(data2);
            int result3 = network.Classify(data3);
            int result4 = network.Classify(data4);

            Console.WriteLine("Winner in someinput 2 "+network.Winner(new BasicMLData(SOMInput2[0])));

            Console.WriteLine("First  :" +result1);
            Console.WriteLine("Second "+result2);
            Console.WriteLine("Third  :" + result3);
            Console.WriteLine("Fourth " + result4);

            Assert.IsTrue(result1 != result2);

            train.TrainPattern(new BasicMLData(SOMInput2[2]));
            Console.WriteLine("After training pattern: " + network.Winner(new BasicMLData(SOMInput2[1])));

            var result = new SupportVectorMachine(4, SVMType.SupportVectorClassification, KernelType.Sigmoid);
            training = new BasicMLDataSet(
                SOMInput2, SOMInput2);
            SVMTrain trainsvm = new SVMTrain(result, training);

            trainsvm.Iteration(50);

            result1 = result.Classify(data1);

            result2 = result.Classify(data2);
            result3 = result.Classify(data3);
            result4 = result.Classify(data4);

            Console.WriteLine("SVM classification : EURUSD 1 :"+result1 + "  GBPUSD:"+result2 + " EURCHF :"+result3+  " EURJPY:"+result4 );
        }