diff --git a/docs/ml-guide.md b/docs/ml-guide.md index ce53400b6ee56..a92a285f3af85 100644 --- a/docs/ml-guide.md +++ b/docs/ml-guide.md @@ -872,3 +872,120 @@ jsc.stop(); + +## Example: Model Selection via Train Validation Split +In addition to `CrossValidator` Spark also offers `TrainValidationSplit` for hyper-parameter tuning. +`TrainValidationSplit` only evaluates each combination of parameters once as opposed to k times in + case of `CrossValidator`. It is therefore less expensive, + but will not produce as reliable results when the training dataset is not sufficiently large.. + +`TrainValidationSplit` takes an `Estimator`, a set of `ParamMap`s provided in the `estimatorParamMaps` parameter, +and an `Evaluator`. +It begins by splitting the dataset into two parts using `trainRatio` parameter +which are used as separate training and test datasets. For example with `$trainRatio=0.75$` (default), +`TrainValidationSplit` will generate a training and test dataset pair where 75% of the data is used for training and 25% for validation. +Similar to `CrossValidator`, `TrainValidationSplit` also iterates through the set of `ParamMap`s. +For each combination of parameters, it trains the given `Estimator` and evaluates it using the given `Evaluator`. +The `ParamMap` which produces the best evaluation metric is selected as the best option. +`TrainValidationSplit` finally fits the `Estimator` using the best `ParamMap` and the entire dataset. + +
+ +
+{% highlight scala %} +import org.apache.spark.ml.evaluation.RegressionEvaluator +import org.apache.spark.ml.regression.LinearRegression +import org.apache.spark.ml.tuning.{ParamGridBuilder, TrainValidationSplit} +import org.apache.spark.mllib.util.MLUtils + +// Prepare training and test data. +val data = MLUtils.loadLibSVMFile(sc, "data/mllib/sample_libsvm_data.txt").toDF() +val Array(training, test) = data.randomSplit(Array(0.9, 0.1), seed = 12345) + +val lr = new LinearRegression() + +// We use a ParamGridBuilder to construct a grid of parameters to search over. +// TrainValidationSplit will try all combinations of values and determine best model using +// the evaluator. +val paramGrid = new ParamGridBuilder() + .addGrid(lr.regParam, Array(0.1, 0.01)) + .addGrid(lr.fitIntercept, Array(true, false)) + .addGrid(lr.elasticNetParam, Array(0.0, 0.5, 1.0)) + .build() + +// In this case the estimator is simply the linear regression. +// A TrainValidationSplit requires an Estimator, a set of Estimator ParamMaps, and an Evaluator. +val trainValidationSplit = new TrainValidationSplit() + .setEstimator(lr) + .setEvaluator(new RegressionEvaluator) + .setEstimatorParamMaps(paramGrid) + +// 80% of the data will be used for training and the remaining 20% for validation. +trainValidationSplit.setTrainRatio(0.8) + +// Run train validation split, and choose the best set of parameters. +val model = trainValidationSplit.fit(training) + +// Make predictions on test data. model is the model with combination of parameters +// that performed best. +model.transform(test) + .select("features", "label", "prediction") + .show() + +{% endhighlight %} +
+ +
+{% highlight java %} +import org.apache.spark.ml.evaluation.RegressionEvaluator; +import org.apache.spark.ml.param.ParamMap; +import org.apache.spark.ml.regression.LinearRegression; +import org.apache.spark.ml.tuning.*; +import org.apache.spark.mllib.regression.LabeledPoint; +import org.apache.spark.mllib.util.MLUtils; +import org.apache.spark.rdd.RDD; +import org.apache.spark.sql.DataFrame; + +DataFrame data = jsql.createDataFrame( + MLUtils.loadLibSVMFile(jsc.sc(), "data/mllib/sample_libsvm_data.txt"), + LabeledPoint.class); + +// Prepare training and test data. +DataFrame[] splits = data.randomSplit(new double [] {0.9, 0.1}, 12345); +DataFrame training = splits[0]; +DataFrame test = splits[1]; + +LinearRegression lr = new LinearRegression(); + +// We use a ParamGridBuilder to construct a grid of parameters to search over. +// TrainValidationSplit will try all combinations of values and determine best model using +// the evaluator. +ParamMap[] paramGrid = new ParamGridBuilder() + .addGrid(lr.regParam(), new double[] {0.1, 0.01}) + .addGrid(lr.fitIntercept()) + .addGrid(lr.elasticNetParam(), new double[] {0.0, 0.5, 1.0}) + .build(); + +// In this case the estimator is simply the linear regression. +// A TrainValidationSplit requires an Estimator, a set of Estimator ParamMaps, and an Evaluator. +TrainValidationSplit trainValidationSplit = new TrainValidationSplit() + .setEstimator(lr) + .setEvaluator(new RegressionEvaluator()) + .setEstimatorParamMaps(paramGrid); + +// 80% of the data will be used for training and the remaining 20% for validation. +trainValidationSplit.setTrainRatio(0.8); + +// Run train validation split, and choose the best set of parameters. +TrainValidationSplitModel model = trainValidationSplit.fit(training); + +// Make predictions on test data. model is the model with combination of parameters +// that performed best. +model.transform(test) + .select("features", "label", "prediction") + .show(); + +{% endhighlight %} +
+ +
diff --git a/examples/src/main/java/org/apache/spark/examples/ml/JavaTrainValidationSplitExample.java b/examples/src/main/java/org/apache/spark/examples/ml/JavaTrainValidationSplitExample.java new file mode 100644 index 0000000000000..23f834ab4332b --- /dev/null +++ b/examples/src/main/java/org/apache/spark/examples/ml/JavaTrainValidationSplitExample.java @@ -0,0 +1,90 @@ +/* + * Licensed to the Apache Software Foundation (ASF) under one or more + * contributor license agreements. See the NOTICE file distributed with + * this work for additional information regarding copyright ownership. + * The ASF licenses this file to You under the Apache License, Version 2.0 + * (the "License"); you may not use this file except in compliance with + * the License. You may obtain a copy of the License at + * + * http://www.apache.org/licenses/LICENSE-2.0 + * + * Unless required by applicable law or agreed to in writing, software + * distributed under the License is distributed on an "AS IS" BASIS, + * WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. + * See the License for the specific language governing permissions and + * limitations under the License. + */ + +package org.apache.spark.examples.ml; + +import org.apache.spark.SparkConf; +import org.apache.spark.api.java.JavaSparkContext; +import org.apache.spark.ml.evaluation.RegressionEvaluator; +import org.apache.spark.ml.param.ParamMap; +import org.apache.spark.ml.regression.LinearRegression; +import org.apache.spark.ml.tuning.*; +import org.apache.spark.mllib.regression.LabeledPoint; +import org.apache.spark.mllib.util.MLUtils; +import org.apache.spark.sql.DataFrame; +import org.apache.spark.sql.SQLContext; + +/** + * A simple example demonstrating model selection using TrainValidationSplit. + * + * The example is based on {@link org.apache.spark.examples.ml.JavaSimpleParamsExample} + * using linear regression. + * + * Run with + * {{{ + * bin/run-example ml.JavaTrainValidationSplitExample + * }}} + */ +public class JavaTrainValidationSplitExample { + + public static void main(String[] args) { + SparkConf conf = new SparkConf().setAppName("JavaTrainValidationSplitExample"); + JavaSparkContext jsc = new JavaSparkContext(conf); + SQLContext jsql = new SQLContext(jsc); + + DataFrame data = jsql.createDataFrame( + MLUtils.loadLibSVMFile(jsc.sc(), "data/mllib/sample_libsvm_data.txt"), + LabeledPoint.class); + + // Prepare training and test data. + DataFrame[] splits = data.randomSplit(new double [] {0.9, 0.1}, 12345); + DataFrame training = splits[0]; + DataFrame test = splits[1]; + + LinearRegression lr = new LinearRegression(); + + // We use a ParamGridBuilder to construct a grid of parameters to search over. + // TrainValidationSplit will try all combinations of values and determine best model using + // the evaluator. + ParamMap[] paramGrid = new ParamGridBuilder() + .addGrid(lr.regParam(), new double[] {0.1, 0.01}) + .addGrid(lr.fitIntercept()) + .addGrid(lr.elasticNetParam(), new double[] {0.0, 0.5, 1.0}) + .build(); + + // In this case the estimator is simply the linear regression. + // A TrainValidationSplit requires an Estimator, a set of Estimator ParamMaps, and an Evaluator. + TrainValidationSplit trainValidationSplit = new TrainValidationSplit() + .setEstimator(lr) + .setEvaluator(new RegressionEvaluator()) + .setEstimatorParamMaps(paramGrid); + + // 80% of the data will be used for training and the remaining 20% for validation. + trainValidationSplit.setTrainRatio(0.8); + + // Run train validation split, and choose the best set of parameters. + TrainValidationSplitModel model = trainValidationSplit.fit(training); + + // Make predictions on test data. model is the model with combination of parameters + // that performed best. + model.transform(test) + .select("features", "label", "prediction") + .show(); + + jsc.stop(); + } +} diff --git a/examples/src/main/scala/org/apache/spark/examples/ml/TrainValidationSplitExample.scala b/examples/src/main/scala/org/apache/spark/examples/ml/TrainValidationSplitExample.scala new file mode 100644 index 0000000000000..1abdf219b1c00 --- /dev/null +++ b/examples/src/main/scala/org/apache/spark/examples/ml/TrainValidationSplitExample.scala @@ -0,0 +1,80 @@ +/* + * Licensed to the Apache Software Foundation (ASF) under one or more + * contributor license agreements. See the NOTICE file distributed with + * this work for additional information regarding copyright ownership. + * The ASF licenses this file to You under the Apache License, Version 2.0 + * (the "License"); you may not use this file except in compliance with + * the License. You may obtain a copy of the License at + * + * http://www.apache.org/licenses/LICENSE-2.0 + * + * Unless required by applicable law or agreed to in writing, software + * distributed under the License is distributed on an "AS IS" BASIS, + * WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. + * See the License for the specific language governing permissions and + * limitations under the License. + */ + +package org.apache.spark.examples.ml + +import org.apache.spark.ml.evaluation.RegressionEvaluator +import org.apache.spark.ml.regression.LinearRegression +import org.apache.spark.ml.tuning.{ParamGridBuilder, TrainValidationSplit} +import org.apache.spark.mllib.util.MLUtils +import org.apache.spark.sql.SQLContext +import org.apache.spark.{SparkConf, SparkContext} + +/** + * A simple example demonstrating model selection using TrainValidationSplit. + * + * The example is based on [[SimpleParamsExample]] using linear regression. + * Run with + * {{{ + * bin/run-example ml.TrainValidationSplitExample + * }}} + */ +object TrainValidationSplitExample { + + def main(args: Array[String]): Unit = { + val conf = new SparkConf().setAppName("TrainValidationSplitExample") + val sc = new SparkContext(conf) + val sqlContext = new SQLContext(sc) + import sqlContext.implicits._ + + // Prepare training and test data. + val data = MLUtils.loadLibSVMFile(sc, "data/mllib/sample_libsvm_data.txt").toDF() + val Array(training, test) = data.randomSplit(Array(0.9, 0.1), seed = 12345) + + val lr = new LinearRegression() + + // We use a ParamGridBuilder to construct a grid of parameters to search over. + // TrainValidationSplit will try all combinations of values and determine best model using + // the evaluator. + val paramGrid = new ParamGridBuilder() + .addGrid(lr.regParam, Array(0.1, 0.01)) + .addGrid(lr.fitIntercept, Array(true, false)) + .addGrid(lr.elasticNetParam, Array(0.0, 0.5, 1.0)) + .build() + + // In this case the estimator is simply the linear regression. + // A TrainValidationSplit requires an Estimator, a set of Estimator ParamMaps, and an Evaluator. + val trainValidationSplit = new TrainValidationSplit() + .setEstimator(lr) + .setEvaluator(new RegressionEvaluator) + .setEstimatorParamMaps(paramGrid) + + // 80% of the data will be used for training and the remaining 20% for validation. + trainValidationSplit.setTrainRatio(0.8) + + // Run train validation split, and choose the best set of parameters. + val model = trainValidationSplit.fit(training) + + // Make predictions on test data. model is the model with combination of parameters + // that performed best. + model.transform(test) + .select("features", "label", "prediction") + .show() + + sc.stop() + } +}