Beispiel #1
0
        /// <summary>
        /// Predict a target using a tree binary classification model trained with the <see cref="LightGbmBinaryClassificationTrainer"/>.
        /// </summary>
        /// <param name="catalog">The <see cref="BinaryClassificationCatalog"/>.</param>
        /// <param name="label">The label column.</param>
        /// <param name="features">The features column.</param>
        /// <param name="weights">The weights column.</param>
        /// <param name="options">Algorithm advanced settings.</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 set of output columns including in order the predicted binary classification score (which will range
        /// from negative to positive infinity), the calibrated prediction (from 0 to 1), and the predicted label.</returns>
        public static (Scalar <float> score, Scalar <float> probability, Scalar <bool> predictedLabel) LightGbm(this BinaryClassificationCatalog.BinaryClassificationTrainers catalog,
                                                                                                                Scalar <bool> label, Vector <float> features, Scalar <float> weights,
                                                                                                                Options options,
                                                                                                                Action <CalibratedModelParametersBase <LightGbmBinaryModelParameters, PlattCalibrator> > onFit = null)
        {
            CheckUserValues(label, features, weights, options, onFit);

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

                var trainer = new LightGbmBinaryClassificationTrainer(env, options);

                if (onFit != null)
                {
                    return(trainer.WithOnFitDelegate(trans => onFit(trans.Model)));
                }
                else
                {
                    return(trainer);
                }
            }, label, features, weights);

            return(rec.Output);
        }
Beispiel #2
0
        /// <summary>
        /// Predict a target using a tree binary classification model trained with the <see cref="LightGbmBinaryClassificationTrainer"/>.
        /// </summary>
        /// <param name="catalog">The <see cref="BinaryClassificationCatalog"/>.</param>
        /// <param name="label">The label column.</param>
        /// <param name="features">The features column.</param>
        /// <param name="weights">The weights column.</param>
        /// <param name="numberOfLeaves">The number of leaves to use.</param>
        /// <param name="minimumExampleCountPerLeaf">The minimal number of data points allowed in a leaf of the tree, out of the subsampled data.</param>
        /// <param name="learningRate">The learning rate.</param>
        /// <param name="numberOfIterations">Number of iterations.</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 set of output columns including in order the predicted binary classification score (which will range
        /// from negative to positive infinity), the calibrated prediction (from 0 to 1), and the predicted label.</returns>
        /// <example>
        /// <format type="text/markdown">
        /// <![CDATA[
        ///  [!code-csharp[LightGBM](~/../docs/samples/docs/samples/Microsoft.ML.Samples/Static/LightGBMBinaryClassification.cs)]
        /// ]]></format>
        /// </example>
        public static (Scalar <float> score, Scalar <float> probability, Scalar <bool> predictedLabel) LightGbm(this BinaryClassificationCatalog.BinaryClassificationTrainers catalog,
                                                                                                                Scalar <bool> label,
                                                                                                                Vector <float> features,
                                                                                                                Scalar <float> weights         = null,
                                                                                                                int?numberOfLeaves             = null,
                                                                                                                int?minimumExampleCountPerLeaf = null,
                                                                                                                double?learningRate            = null,
                                                                                                                int numberOfIterations         = Options.Defaults.NumberOfIterations,
                                                                                                                Action <CalibratedModelParametersBase <LightGbmBinaryModelParameters, PlattCalibrator> > onFit = null)
        {
            CheckUserValues(label, features, weights, numberOfLeaves, minimumExampleCountPerLeaf, learningRate, numberOfIterations, onFit);

            var rec = new TrainerEstimatorReconciler.BinaryClassifier(
                (env, labelName, featuresName, weightsName) =>
            {
                var trainer = new LightGbmBinaryClassificationTrainer(env, labelName, featuresName, weightsName, numberOfLeaves,
                                                                      minimumExampleCountPerLeaf, learningRate, numberOfIterations);

                if (onFit != null)
                {
                    return(trainer.WithOnFitDelegate(trans => onFit(trans.Model)));
                }
                else
                {
                    return(trainer);
                }
            }, label, features, weights);

            return(rec.Output);
        }