Exemple #1
0
        public static MultinomialLogisticRegression Train(IDataTable table, ILinearAlgebraProvider lap,
                                                          int trainingIterations, float trainingRate, float lambda,
                                                          Func <float, bool> costCallback = null)
        {
            var trainingData = table.ConvertToBinaryClassification();

            // train the classifiers on each training data set
            var classifier = new List <LogisticRegression>();
            var label      = new List <string>();

            foreach (var item in trainingData)
            {
                classifier.Add(item.Table.TrainLogisticRegression(lap, trainingIterations, trainingRate,
                                                                  lambda, costCallback));
                label.Add(item.Classification);
            }

            // build the model
            return(new MultinomialLogisticRegression
            {
                Classification = label.ToArray(),
                Model = classifier.ToArray(),
                FeatureColumn = Enumerable.Range(0, table.ColumnCount).
                                Where(c => c != table.TargetColumnIndex).ToArray()
            });
        }