org.jpmml.converter.clustering.ClusteringModelUtil Java Examples
The following examples show how to use
org.jpmml.converter.clustering.ClusteringModelUtil.
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Example #1
Source File: KMeansModelConverter.java From jpmml-sparkml with GNU Affero General Public License v3.0 | 6 votes |
@Override public ClusteringModel encodeModel(Schema schema){ KMeansModel model = getTransformer(); List<Cluster> clusters = new ArrayList<>(); Vector[] clusterCenters = model.clusterCenters(); for(int i = 0; i < clusterCenters.length; i++){ Cluster cluster = new Cluster(PMMLUtil.createRealArray(VectorUtil.toList(clusterCenters[i]))) .setId(String.valueOf(i)); clusters.add(cluster); } ComparisonMeasure comparisonMeasure = new ComparisonMeasure(ComparisonMeasure.Kind.DISTANCE, new SquaredEuclidean()) .setCompareFunction(CompareFunction.ABS_DIFF); return new ClusteringModel(MiningFunction.CLUSTERING, ClusteringModel.ModelClass.CENTER_BASED, clusters.size(), ModelUtil.createMiningSchema(schema.getLabel()), comparisonMeasure, ClusteringModelUtil.createClusteringFields(schema.getFeatures()), clusters); }
Example #2
Source File: KMeans.java From jpmml-sklearn with GNU Affero General Public License v3.0 | 5 votes |
@Override public ClusteringModel encodeModel(Schema schema){ int[] shape = getClusterCentersShape(); int numberOfClusters = shape[0]; int numberOfFeatures = shape[1]; List<? extends Number> clusterCenters = getClusterCenters(); List<Integer> labels = getLabels(); Multiset<Integer> labelCounts = HashMultiset.create(); if(labels != null){ labelCounts.addAll(labels); } List<Cluster> clusters = new ArrayList<>(); for(int i = 0; i < numberOfClusters; i++){ Cluster cluster = new Cluster(PMMLUtil.createRealArray(CMatrixUtil.getRow(clusterCenters, numberOfClusters, numberOfFeatures, i))) .setId(String.valueOf(i)) .setSize((labelCounts.size () > 0 ? labelCounts.count(i) : null)); clusters.add(cluster); } ComparisonMeasure comparisonMeasure = new ComparisonMeasure(ComparisonMeasure.Kind.DISTANCE, new SquaredEuclidean()) .setCompareFunction(CompareFunction.ABS_DIFF); ClusteringModel clusteringModel = new ClusteringModel(MiningFunction.CLUSTERING, ClusteringModel.ModelClass.CENTER_BASED, numberOfClusters, ModelUtil.createMiningSchema(schema.getLabel()), comparisonMeasure, ClusteringModelUtil.createClusteringFields(schema.getFeatures()), clusters) .setOutput(ClusteringModelUtil.createOutput(FieldName.create("Cluster"), DataType.DOUBLE, clusters)); return clusteringModel; }
Example #3
Source File: KMeansConverter.java From jpmml-r with GNU Affero General Public License v3.0 | 5 votes |
@Override public Model encodeModel(Schema schema){ RGenericVector kmeans = getObject(); RDoubleVector centers = kmeans.getDoubleElement("centers"); RIntegerVector size = kmeans.getIntegerElement("size"); RIntegerVector centersDim = centers.dim(); int rows = centersDim.getValue(0); int columns = centersDim.getValue(1); List<Cluster> clusters = new ArrayList<>(); RStringVector rowNames = centers.dimnames(0); for(int i = 0; i < rowNames.size(); i++){ Cluster cluster = new Cluster(PMMLUtil.createRealArray(FortranMatrixUtil.getRow(centers.getValues(), rows, columns, i))) .setId(String.valueOf(i + 1)) .setName(rowNames.getValue(i)) .setSize(size.getValue(i)); clusters.add(cluster); } ComparisonMeasure comparisonMeasure = new ComparisonMeasure(ComparisonMeasure.Kind.DISTANCE, new SquaredEuclidean()) .setCompareFunction(CompareFunction.ABS_DIFF); ClusteringModel clusteringModel = new ClusteringModel(MiningFunction.CLUSTERING, ClusteringModel.ModelClass.CENTER_BASED, rows, ModelUtil.createMiningSchema(schema.getLabel()), comparisonMeasure, ClusteringModelUtil.createClusteringFields(schema.getFeatures()), clusters) .setOutput(ClusteringModelUtil.createOutput(FieldName.create("cluster"), DataType.DOUBLE, clusters)); return clusteringModel; }