Example #1
0
        public void CreditDataClassifyMethod()
        {
            DataSetLoader          dataSetLoader          = new DataSetLoader();
            var                    creditData             = dataSetLoader.SelectCreditData();
            var                    data                   = dataSetLoader.CalculatePercent(100, creditData);
            DecisionTreeClassifier decisionTreeClassifier =
                new DecisionTreeClassifier(data.Item1, new ShannonEntropySplitter());
            NaiveBayesClassifier naiveBayes =
                new NaiveBayesClassifier(data.Item1);
            var           list          = new List <NetML.Classification>();
            Kernel        kernel        = new LinearKernel();
            SVMClassifier SVMClassifier =
                new SVMClassifier(creditData, kernel, 0.001, 10.0);
            var neuronalCreditData = dataSetLoader.SelectNeuronalNetworksCreditData();
            NeuronalNetworkClassifier neuronalNetworkClassifier =
                new NeuronalNetworkClassifier(neuronalCreditData, 20, 2, 20, 5000, 0.1);

            list.Add(decisionTreeClassifier);
            list.Add(naiveBayes);
            list.Add(SVMClassifier);
            //list.Add(neuronalNetworkClassifier);
            Classifier classifier = new Classifier();

            classifier.Classify(list, creditData);
        }
Example #2
0
        public void AnimalClassifyMethod()
        {
            DataSetLoader          dataSetLoader          = new DataSetLoader();
            var                    animals                = dataSetLoader.SelectAnimals();
            var                    data                   = dataSetLoader.CalculatePercent(50, animals);
            DecisionTreeClassifier decisionTreeClassifier =
                new DecisionTreeClassifier(data.Item1, new ShannonEntropySplitter());
            NaiveBayesClassifier naiveBayes =
                new NaiveBayesClassifier(data.Item1);
            var           list   = new List <NetML.Classification>();
            Kernel        kernel = new LinearKernel();
            SVMClassifier animalSVMClassifier =
                new SVMClassifier(animals, kernel, 0.001, 10.0);
            var neuronalAnimals = dataSetLoader.SelectNeuronalNetworkAnimals();
            NeuronalNetworkClassifier neuronalNetworkClassifier =
                new NeuronalNetworkClassifier(neuronalAnimals, 16, 7, 16, 500, 0.1);

            list.Add(decisionTreeClassifier);
            list.Add(naiveBayes);
            list.Add(animalSVMClassifier);
            list.Add(neuronalNetworkClassifier);
            Classifier classifier = new Classifier();

            classifier.Classify(list, data.Item2);
        }