Ejemplo n.º 1
0
        /// <summary>
        /// Predict a target using a linear regression model trained with the <see cref="Microsoft.ML.Runtime.Learners.LogisticRegression"/> trainer.
        /// </summary>
        /// <param name="ctx">The regression context trainer object.</param>
        /// <param name="label">The label, or dependent variable.</param>
        /// <param name="features">The features, or independent variables.</param>
        /// <param name="weights">The optional example weights.</param>
        /// <param name="enoforceNoNegativity">Enforce non-negative weights.</param>
        /// <param name="l1Weight">Weight of L1 regularization term.</param>
        /// <param name="l2Weight">Weight of L2 regularization term.</param>
        /// <param name="memorySize">Memory size for <see cref="Microsoft.ML.Runtime.Learners.LogisticRegression"/>. Low=faster, less accurate.</param>
        /// <param name="optimizationTolerance">Threshold for optimizer convergence.</param>
        /// <param name="advancedSettings">A delegate to apply all the advanced arguments to the algorithm.</param>
        /// <param name="onFit">A delegate that is called every time the
        /// <see cref="Estimator{TInShape, TOutShape, TTransformer}.Fit(DataView{TInShape})"/> method is called on the
        /// <see cref="Estimator{TInShape, TOutShape, TTransformer}"/> instance created out of this. This delegate will receive
        /// the linear model that was trained.  Note that this action cannot change the result in any way; it is only a way for the caller to
        /// be informed about what was learnt.</param>
        /// <returns>The predicted output.</returns>
        public static Scalar <float> PoissonRegression(this RegressionContext.RegressionTrainers ctx,
                                                       Scalar <float> label,
                                                       Vector <float> features,
                                                       Scalar <float> weights                          = null,
                                                       float l1Weight                                  = Arguments.Defaults.L1Weight,
                                                       float l2Weight                                  = Arguments.Defaults.L2Weight,
                                                       float optimizationTolerance                     = Arguments.Defaults.OptTol,
                                                       int memorySize                                  = Arguments.Defaults.MemorySize,
                                                       bool enoforceNoNegativity                       = Arguments.Defaults.EnforceNonNegativity,
                                                       Action <Arguments> advancedSettings             = null,
                                                       Action <PoissonRegressionModelParameters> onFit = null)
        {
            LbfgsStaticUtils.ValidateParams(label, features, weights, l1Weight, l2Weight, optimizationTolerance, memorySize, enoforceNoNegativity, advancedSettings, onFit);

            var rec = new TrainerEstimatorReconciler.Regression(
                (env, labelName, featuresName, weightsName) =>
            {
                var trainer = new PoissonRegression(env, labelName, featuresName, weightsName,
                                                    l1Weight, l2Weight, optimizationTolerance, memorySize, enoforceNoNegativity);

                if (onFit != null)
                {
                    return(trainer.WithOnFitDelegate(trans => onFit(trans.Model)));
                }

                return(trainer);
            }, label, features, weights);

            return(rec.Score);
        }
Ejemplo n.º 2
0
        /// <summary>
        /// Predict a target using a linear regression model trained with the <see cref="Microsoft.ML.Trainers.LogisticRegression"/> trainer.
        /// </summary>
        /// <param name="catalog">The regression catalog trainer object.</param>
        /// <param name="label">The label, or dependent variable.</param>
        /// <param name="features">The features, or independent variables.</param>
        /// <param name="weights">The optional example weights.</param>
        /// <param name="enforceNonNegativity">Enforce non-negative weights.</param>
        /// <param name="l1Regularization">Weight of L1 regularization term.</param>
        /// <param name="l2Regularization">Weight of L2 regularization term.</param>
        /// <param name="historySize">Memory size for <see cref="Microsoft.ML.Trainers.LogisticRegression"/>. Low=faster, less accurate.</param>
        /// <param name="optimizationTolerance">Threshold for optimizer convergence.</param>
        /// <param name="onFit">A delegate that is called every time the
        /// <see cref="Estimator{TInShape, TOutShape, TTransformer}.Fit(DataView{TInShape})"/> method is called on the
        /// <see cref="Estimator{TInShape, TOutShape, TTransformer}"/> instance created out of this. This delegate will receive
        /// the linear model that was trained.  Note that this action cannot change the result in any way; it is only a way for the caller to
        /// be informed about what was learnt.</param>
        /// <returns>The predicted output.</returns>
        public static Scalar <float> PoissonRegression(this RegressionCatalog.RegressionTrainers catalog,
                                                       Scalar <float> label,
                                                       Vector <float> features,
                                                       Scalar <float> weights      = null,
                                                       float l1Regularization      = Options.Defaults.L1Regularization,
                                                       float l2Regularization      = Options.Defaults.L2Regularization,
                                                       float optimizationTolerance = Options.Defaults.OptimizationTolerance,
                                                       int historySize             = Options.Defaults.HistorySize,
                                                       bool enforceNonNegativity   = Options.Defaults.EnforceNonNegativity,
                                                       Action <PoissonRegressionModelParameters> onFit = null)
        {
            LbfgsStaticUtils.ValidateParams(label, features, weights, l1Regularization, l2Regularization, optimizationTolerance, historySize, enforceNonNegativity, onFit);

            var rec = new TrainerEstimatorReconciler.Regression(
                (env, labelName, featuresName, weightsName) =>
            {
                var trainer = new PoissonRegression(env, labelName, featuresName, weightsName,
                                                    l1Regularization, l2Regularization, optimizationTolerance, historySize, enforceNonNegativity);

                if (onFit != null)
                {
                    return(trainer.WithOnFitDelegate(trans => onFit(trans.Model)));
                }

                return(trainer);
            }, label, features, weights);

            return(rec.Score);
        }
Ejemplo n.º 3
0
        /// <summary>
        /// Predict a target using a linear regression model trained with the <see cref="Microsoft.ML.Trainers.LogisticRegression"/> trainer.
        /// </summary>
        /// <param name="catalog">The regression catalog trainer object.</param>
        /// <param name="label">The label, or dependent variable.</param>
        /// <param name="features">The features, or independent variables.</param>
        /// <param name="weights">The optional example weights.</param>
        /// <param name="options">Advanced arguments to the algorithm.</param>
        /// <param name="onFit">A delegate that is called every time the
        /// <see cref="Estimator{TInShape, TOutShape, TTransformer}.Fit(DataView{TInShape})"/> method is called on the
        /// <see cref="Estimator{TInShape, TOutShape, TTransformer}"/> instance created out of this. This delegate will receive
        /// the linear model that was trained.  Note that this action cannot change the result in any way; it is only a way for the caller to
        /// be informed about what was learnt.</param>
        /// <returns>The predicted output.</returns>
        public static Scalar <float> PoissonRegression(this RegressionCatalog.RegressionTrainers catalog,
                                                       Scalar <float> label,
                                                       Vector <float> features,
                                                       Scalar <float> weights,
                                                       PoissonRegression.Options options,
                                                       Action <PoissonRegressionModelParameters> onFit = null)
        {
            Contracts.CheckValue(label, nameof(label));
            Contracts.CheckValue(features, nameof(features));
            Contracts.CheckValue(options, nameof(options));
            Contracts.CheckValueOrNull(onFit);

            var rec = new TrainerEstimatorReconciler.Regression(
                (env, labelName, featuresName, weightsName) =>
            {
                options.LabelColumnName         = labelName;
                options.FeatureColumnName       = featuresName;
                options.ExampleWeightColumnName = weightsName;

                var trainer = new PoissonRegression(env, options);

                if (onFit != null)
                {
                    return(trainer.WithOnFitDelegate(trans => onFit(trans.Model)));
                }

                return(trainer);
            }, label, features, weights);

            return(rec.Score);
        }
Ejemplo n.º 4
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 public void TestEstimatorPoissonRegression()
 {
     var dataView = GetRegressionPipeline();
     var pipe = new PoissonRegression(Env, "Features", "Label");
     TestEstimatorCore(pipe, dataView);
     Done();
 }
Ejemplo n.º 5
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        public void TestEstimatorPoissonRegression()
        {
            var dataView = GetRegressionPipeline();
            var trainer  = new PoissonRegression(Env, "Label", "Features");

            TestEstimatorCore(trainer, dataView);

            var model = trainer.Fit(dataView);

            trainer.Train(dataView, model.Model);
            Done();
        }