org.jpmml.converter.FeatureUtil Java Examples

The following examples show how to use org.jpmml.converter.FeatureUtil. You can vote up the ones you like or vote down the ones you don't like, and go to the original project or source file by following the links above each example. You may check out the related API usage on the sidebar.
Example #1
Source File: RegexTokenizerConverter.java    From jpmml-sparkml with GNU Affero General Public License v3.0 6 votes vote down vote up
@Override
public List<Feature> encodeFeatures(SparkMLEncoder encoder){
	RegexTokenizer transformer = getTransformer();

	if(!transformer.getGaps()){
		throw new IllegalArgumentException("Expected splitter mode, got token matching mode");
	} // End if

	if(transformer.getMinTokenLength() != 1){
		throw new IllegalArgumentException("Expected 1 as minimum token length, got " + transformer.getMinTokenLength() + " as minimum token length");
	}

	Feature feature = encoder.getOnlyFeature(transformer.getInputCol());

	Field<?> field = feature.getField();

	if(transformer.getToLowercase()){
		Apply apply = PMMLUtil.createApply(PMMLFunctions.LOWERCASE, feature.ref());

		field = encoder.createDerivedField(FeatureUtil.createName("lowercase", feature), OpType.CATEGORICAL, DataType.STRING, apply);
	}

	return Collections.singletonList(new DocumentFeature(encoder, field, transformer.getPattern()));
}
 
Example #2
Source File: MatchesTransformer.java    From jpmml-sklearn with GNU Affero General Public License v3.0 6 votes vote down vote up
@Override
public List<Feature> encodeFeatures(List<Feature> features, SkLearnEncoder encoder){
	String pattern = getPattern();

	ClassDictUtil.checkSize(1, features);

	Feature feature = features.get(0);
	if(!(DataType.STRING).equals(feature.getDataType())){
		throw new IllegalArgumentException();
	}

	Apply apply = PMMLUtil.createApply(PMMLFunctions.MATCHES)
		.addExpressions(feature.ref())
		.addExpressions(PMMLUtil.createConstant(pattern, DataType.STRING));

	DerivedField derivedField = encoder.createDerivedField(FeatureUtil.createName("matches", feature), OpType.CATEGORICAL, DataType.BOOLEAN, apply);

	return Collections.singletonList(new BooleanFeature(encoder, derivedField));
}
 
Example #3
Source File: ImputerUtil.java    From jpmml-sklearn with GNU Affero General Public License v3.0 6 votes vote down vote up
static
public Feature encodeIndicatorFeature(Feature feature, Object missingValue, SkLearnEncoder encoder){
	Expression expression = feature.ref();

	if(missingValue != null){
		expression = PMMLUtil.createApply(PMMLFunctions.EQUAL, expression, PMMLUtil.createConstant(missingValue, feature.getDataType()));
	} else

	{
		expression = PMMLUtil.createApply(PMMLFunctions.ISMISSING, expression);
	}

	DerivedField derivedField = encoder.createDerivedField(FeatureUtil.createName("missing_indicator", feature), OpType.CATEGORICAL, DataType.BOOLEAN, expression);

	return new BooleanFeature(encoder, derivedField);
}
 
Example #4
Source File: SubstringTransformer.java    From jpmml-sklearn with GNU Affero General Public License v3.0 6 votes vote down vote up
@Override
public List<Feature> encodeFeatures(List<Feature> features, SkLearnEncoder encoder){
	Integer begin = getBegin();
	Integer end = getEnd();

	if((begin < 0) || (end < begin)){
		throw new IllegalArgumentException();
	}

	ClassDictUtil.checkSize(1, features);

	Feature feature = features.get(0);
	if(!(DataType.STRING).equals(feature.getDataType())){
		throw new IllegalArgumentException();
	}

	Apply apply = PMMLUtil.createApply(PMMLFunctions.SUBSTRING)
		.addExpressions(feature.ref())
		.addExpressions(PMMLUtil.createConstant(begin + 1, DataType.INTEGER), PMMLUtil.createConstant((end - begin), DataType.INTEGER));

	DerivedField derivedField = encoder.createDerivedField(FeatureUtil.createName("substring", feature), OpType.CATEGORICAL, DataType.STRING, apply);

	return Collections.singletonList(new StringFeature(encoder, derivedField));
}
 
Example #5
Source File: ReplaceTransformer.java    From jpmml-sklearn with GNU Affero General Public License v3.0 6 votes vote down vote up
@Override
public List<Feature> encodeFeatures(List<Feature> features, SkLearnEncoder encoder){
	String pattern = getPattern();
	String replacement = getReplacement();

	ClassDictUtil.checkSize(1, features);

	Feature feature = features.get(0);
	if(!(DataType.STRING).equals(feature.getDataType())){
		throw new IllegalArgumentException();
	}

	Apply apply = PMMLUtil.createApply(PMMLFunctions.REPLACE)
		.addExpressions(feature.ref())
		.addExpressions(PMMLUtil.createConstant(pattern, DataType.STRING), PMMLUtil.createConstant(replacement, DataType.STRING));

	DerivedField derivedField = encoder.createDerivedField(FeatureUtil.createName("replace", feature), OpType.CATEGORICAL, DataType.STRING, apply);

	return Collections.singletonList(new StringFeature(encoder, derivedField));
}
 
Example #6
Source File: Aggregator.java    From jpmml-sklearn with GNU Affero General Public License v3.0 6 votes vote down vote up
@Override
public List<Feature> encodeFeatures(List<Feature> features, SkLearnEncoder encoder){
	String function = getFunction();

	if(features.size() <= 1){
		return features;
	}

	Apply apply = PMMLUtil.createApply(translateFunction(function));

	for(Feature feature : features){
		apply.addExpressions(feature.ref());
	}

	FieldName name = FeatureUtil.createName(function, features);

	DerivedField derivedField = encoder.createDerivedField(name, OpType.CONTINUOUS, DataType.DOUBLE, apply);

	return Collections.singletonList(new ContinuousFeature(encoder, derivedField));
}
 
Example #7
Source File: FunctionTransformer.java    From jpmml-sklearn with GNU Affero General Public License v3.0 6 votes vote down vote up
@Override
public List<Feature> encodeFeatures(List<Feature> features, SkLearnEncoder encoder){
	UFunc func = getFunc();

	if(func == null){
		return features;
	}

	List<Feature> result = new ArrayList<>();

	for(int i = 0; i < features.size(); i++){
		ContinuousFeature continuousFeature = (features.get(i)).toContinuousFeature();

		DerivedField derivedField = encoder.ensureDerivedField(FeatureUtil.createName(func.getName(), continuousFeature), OpType.CONTINUOUS, DataType.DOUBLE, () -> UFuncUtil.encodeUFunc(func, Collections.singletonList(continuousFeature.ref())));

		result.add(new ContinuousFeature(encoder, derivedField));
	}

	return result;
}
 
Example #8
Source File: MVRConverter.java    From jpmml-r with GNU Affero General Public License v3.0 5 votes vote down vote up
private void scaleFeatures(RExpEncoder encoder){
	RGenericVector mvr = getObject();

	RDoubleVector scale = mvr.getDoubleElement("scale", false);
	if(scale == null){
		return;
	}

	List<Feature> features = encoder.getFeatures();

	if(scale.size() != features.size()){
		throw new IllegalArgumentException();
	}

	for(int i = 0; i < features.size(); i++){
		Feature feature = features.get(i);
		Double factor = scale.getValue(i);

		if(ValueUtil.isOne(factor)){
			continue;
		}

		ContinuousFeature continuousFeature = feature.toContinuousFeature();

		Apply apply = PMMLUtil.createApply(PMMLFunctions.DIVIDE, continuousFeature.ref(), PMMLUtil.createConstant(factor));

		DerivedField derivedField = encoder.createDerivedField(FeatureUtil.createName("scale", feature), OpType.CONTINUOUS, DataType.DOUBLE, apply);

		features.set(i, new ContinuousFeature(encoder, derivedField));
	}
}
 
Example #9
Source File: StringNormalizer.java    From jpmml-sklearn with GNU Affero General Public License v3.0 5 votes vote down vote up
@Override
public List<Feature> encodeFeatures(List<Feature> features, SkLearnEncoder encoder){
	String function = getFunction();
	Boolean trimBlanks = getTrimBlanks();

	if(function == null && !trimBlanks){
		return features;
	}

	List<Feature> result = new ArrayList<>();

	for(Feature feature : features){
		Expression expression = feature.ref();

		if(function != null){
			expression = PMMLUtil.createApply(translateFunction(function), expression);
		} // End if

		if(trimBlanks){
			expression = PMMLUtil.createApply(PMMLFunctions.TRIMBLANKS, expression);
		}

		Field<?> field = encoder.toCategorical(feature.getName(), Collections.emptyList());

		// XXX: Should have been set by the previous transformer
		field.setDataType(DataType.STRING);

		DerivedField derivedField = encoder.createDerivedField(FeatureUtil.createName("normalize", feature), OpType.CATEGORICAL, DataType.STRING, expression);

		feature = new StringFeature(encoder, derivedField);

		result.add(feature);
	}

	return result;
}
 
Example #10
Source File: EncoderUtil.java    From jpmml-sklearn with GNU Affero General Public License v3.0 5 votes vote down vote up
static
public Feature encodeIndexFeature(Feature feature, List<?> categories, List<? extends Number> indexCategories, Number mapMissingTo, Number defaultValue, DataType dataType, SkLearnEncoder encoder){
	ClassDictUtil.checkSize(categories, indexCategories);

	encoder.toCategorical(feature.getName(), categories);

	Supplier<MapValues> mapValuesSupplier = () -> {
		MapValues mapValues = PMMLUtil.createMapValues(feature.getName(), categories, indexCategories)
			.setMapMissingTo(mapMissingTo)
			.setDefaultValue(defaultValue);

		return mapValues;
	};

	DerivedField derivedField = encoder.ensureDerivedField(FeatureUtil.createName("encoder", feature), OpType.CATEGORICAL, dataType, mapValuesSupplier);

	Feature encodedFeature = new IndexFeature(encoder, derivedField, indexCategories);

	Feature result = new CategoricalFeature(encoder, feature, categories){

		@Override
		public ContinuousFeature toContinuousFeature(){
			return encodedFeature.toContinuousFeature();
		}
	};

	return result;
}
 
Example #11
Source File: Binarizer.java    From jpmml-sklearn with GNU Affero General Public License v3.0 4 votes vote down vote up
@Override
public List<Feature> encodeFeatures(List<Feature> features, SkLearnEncoder encoder){
	Number threshold = getThreshold();

	List<Feature> result = new ArrayList<>();

	for(int i = 0; i < features.size(); i++){
		Feature feature = features.get(i);

		ContinuousFeature continuousFeature = feature.toContinuousFeature();

		// "($name <= threshold) ? 0 : 1"
		Apply apply = PMMLUtil.createApply(PMMLFunctions.THRESHOLD, continuousFeature.ref(), PMMLUtil.createConstant(threshold));

		DerivedField derivedField = encoder.createDerivedField(FeatureUtil.createName("binarizer", continuousFeature), apply);

		result.add(new ContinuousFeature(encoder, derivedField));
	}

	return result;
}
 
Example #12
Source File: LabelBinarizer.java    From jpmml-sklearn with GNU Affero General Public License v3.0 4 votes vote down vote up
@Override
public List<Feature> encodeFeatures(List<Feature> features, SkLearnEncoder encoder){
	List<?> classes = getClasses();

	Number negLabel = getNegLabel();
	Number posLabel = getPosLabel();

	ClassDictUtil.checkSize(1, features);

	Feature feature = features.get(0);

	List<Object> categories = new ArrayList<>();
	categories.addAll(classes);

	List<Number> labelCategories = new ArrayList<>();
	labelCategories.add(negLabel);
	labelCategories.add(posLabel);

	List<Feature> result = new ArrayList<>();

	classes = prepareClasses(classes);

	for(int i = 0; i < classes.size(); i++){
		Object value = classes.get(i);

		if(ValueUtil.isZero(negLabel) && ValueUtil.isOne(posLabel)){
			result.add(new BinaryFeature(encoder, feature, value));
		} else

		{
			// "($name == value) ? pos_label : neg_label"
			Apply apply = PMMLUtil.createApply(PMMLFunctions.IF)
				.addExpressions(PMMLUtil.createApply(PMMLFunctions.EQUAL, feature.ref(), PMMLUtil.createConstant(value, feature.getDataType())))
				.addExpressions(PMMLUtil.createConstant(posLabel), PMMLUtil.createConstant(negLabel));

			FieldName name = (classes.size() > 1 ? FeatureUtil.createName("label_binarizer", feature, i) : FeatureUtil.createName("label_binarizer", feature));

			DerivedField derivedField = encoder.createDerivedField(name, apply);

			result.add(new CategoricalFeature(encoder, derivedField, labelCategories));
		}
	}

	encoder.toCategorical(feature.getName(), categories);

	return result;
}
 
Example #13
Source File: SecondsSinceMidnightTransformer.java    From jpmml-sklearn with GNU Affero General Public License v3.0 4 votes vote down vote up
@Override
public List<Feature> encodeFeatures(List<Feature> features, SkLearnEncoder encoder){
	List<Feature> result = new ArrayList<>();

	for(int i = 0; i < features.size(); i++){
		ObjectFeature objectFeature = (ObjectFeature)features.get(i);

		FieldName name = FieldName.create("seconds_since_midnight(" + (FeatureUtil.getName(objectFeature)).getValue() + ")");

		DerivedField derivedField = encoder.ensureDerivedField(name, OpType.CONTINUOUS, DataType.INTEGER, () -> PMMLUtil.createApply(PMMLFunctions.DATESECONDSSINCEMIDNIGHT, objectFeature.ref()));

		result.add(new ContinuousFeature(encoder, derivedField));
	}

	return result;
}
 
Example #14
Source File: StandardScaler.java    From jpmml-sklearn with GNU Affero General Public License v3.0 4 votes vote down vote up
@Override
public List<Feature> encodeFeatures(List<Feature> features, SkLearnEncoder encoder){
	Boolean withMean = getWithMean();
	Boolean withStd = getWithStd();

	List<? extends Number> mean = (withMean ? getMean() : null);
	List<? extends Number> std = (withStd ? getStd() : null);

	if(mean == null && std == null){
		return features;
	}

	ClassDictUtil.checkSize(features, mean, std);

	List<Feature> result = new ArrayList<>();

	for(int i = 0; i < features.size(); i++){
		Feature feature = features.get(i);

		Number meanValue = (withMean ? mean.get(i) : 0d);
		Number stdValue = (withStd ? std.get(i) : 1d);

		if(ValueUtil.isZero(meanValue) && ValueUtil.isOne(stdValue)){
			result.add(feature);

			continue;
		}

		ContinuousFeature continuousFeature = feature.toContinuousFeature();

		// "($name - mean) / std"
		Expression expression = continuousFeature.ref();

		if(!ValueUtil.isZero(meanValue)){
			expression = PMMLUtil.createApply(PMMLFunctions.SUBTRACT, expression, PMMLUtil.createConstant(meanValue));
		} // End if

		if(!ValueUtil.isOne(stdValue)){
			expression = PMMLUtil.createApply(PMMLFunctions.DIVIDE, expression, PMMLUtil.createConstant(stdValue));
		}

		DerivedField derivedField = encoder.createDerivedField(FeatureUtil.createName("standard_scaler", continuousFeature), expression);

		result.add(new ContinuousFeature(encoder, derivedField));
	}

	return result;
}
 
Example #15
Source File: BSplineTransformer.java    From jpmml-sklearn with GNU Affero General Public License v3.0 4 votes vote down vote up
@Override
public List<Feature> encodeFeatures(List<Feature> features, SkLearnEncoder encoder){
	BSpline bspline = getBSpline();

	ClassDictUtil.checkSize(1, features);

	Feature feature = features.get(0);

	ContinuousFeature continuousFeature = feature.toContinuousFeature();

	DefineFunction defineFunction = createBSplineFunction(bspline, encoder);

	Apply apply = PMMLUtil.createApply(defineFunction.getName())
		.addExpressions(continuousFeature.ref());

	DerivedField derivedField = encoder.createDerivedField(FeatureUtil.createName("bspline", feature), apply);

	return Collections.singletonList(new ContinuousFeature(encoder, derivedField));
}
 
Example #16
Source File: MinMaxScaler.java    From jpmml-sklearn with GNU Affero General Public License v3.0 4 votes vote down vote up
@Override
public List<Feature> encodeFeatures(List<Feature> features, SkLearnEncoder encoder){
	List<? extends Number> min = getMin();
	List<? extends Number> scale = getScale();

	ClassDictUtil.checkSize(features, min, scale);

	List<Feature> result = new ArrayList<>();

	for(int i = 0; i < features.size(); i++){
		Feature feature = features.get(i);

		Number minValue = min.get(i);
		Number scaleValue = scale.get(i);

		if(ValueUtil.isOne(scaleValue) && ValueUtil.isZero(minValue)){
			result.add(feature);

			continue;
		}

		ContinuousFeature continuousFeature = feature.toContinuousFeature();

		// "($name * scale) + min"
		Expression expression = continuousFeature.ref();

		if(!ValueUtil.isOne(scaleValue)){
			expression = PMMLUtil.createApply(PMMLFunctions.MULTIPLY, expression, PMMLUtil.createConstant(scaleValue));
		} // End if

		if(!ValueUtil.isZero(minValue)){
			expression = PMMLUtil.createApply(PMMLFunctions.ADD, expression, PMMLUtil.createConstant(minValue));
		}

		DerivedField derivedField = encoder.createDerivedField(FeatureUtil.createName("mix_max_scaler", continuousFeature), expression);

		result.add(new ContinuousFeature(encoder, derivedField));
	}

	return result;
}
 
Example #17
Source File: RobustScaler.java    From jpmml-sklearn with GNU Affero General Public License v3.0 4 votes vote down vote up
@Override
public List<Feature> encodeFeatures(List<Feature> features, SkLearnEncoder encoder){
	Boolean withCentering = getWithCentering();
	Boolean withScaling = getWithScaling();

	List<? extends Number> center = (withCentering ? getCenter() : null);
	List<? extends Number> scale = (withScaling ? getScale() : null);

	if(center == null && scale == null){
		return features;
	}

	ClassDictUtil.checkSize(features, center, scale);

	List<Feature> result = new ArrayList<>();

	for(int i = 0; i < features.size(); i++){
		Feature feature = features.get(i);

		Number centerValue = (withCentering ? center.get(i) : 0d);
		Number scaleValue = (withScaling ? scale.get(i) : 1d);

		if(ValueUtil.isZero(centerValue) && ValueUtil.isOne(scaleValue)){
			result.add(feature);

			continue;
		}

		ContinuousFeature continuousFeature = feature.toContinuousFeature();

		// "($name - center) / scale"
		Expression expression = continuousFeature.ref();

		if(!ValueUtil.isZero(centerValue)){
			expression = PMMLUtil.createApply(PMMLFunctions.SUBTRACT, expression, PMMLUtil.createConstant(centerValue));
		} // End if

		if(!ValueUtil.isOne(scaleValue)){
			expression = PMMLUtil.createApply(PMMLFunctions.DIVIDE, expression, PMMLUtil.createConstant(scaleValue));
		}

		DerivedField derivedField = encoder.createDerivedField(FeatureUtil.createName("robust_scaler", continuousFeature), expression);

		result.add(new ContinuousFeature(encoder, derivedField));
	}

	return result;
}
 
Example #18
Source File: ImputerUtil.java    From jpmml-sklearn with GNU Affero General Public License v3.0 4 votes vote down vote up
static
public Feature encodeFeature(Feature feature, Boolean addIndicator, Object missingValue, Object replacementValue, MissingValueTreatmentMethod missingValueTreatmentMethod, SkLearnEncoder encoder){
	Field<?> field = feature.getField();

	if(field instanceof DataField && !addIndicator){
		DataField dataField = (DataField)field;

		encoder.addDecorator(dataField, new MissingValueDecorator(missingValueTreatmentMethod, replacementValue));

		if(missingValue != null){
			PMMLUtil.addValues(dataField, Collections.singletonList(missingValue), Value.Property.MISSING);
		}

		return feature;
	} // End if

	if((field instanceof DataField) || (field instanceof DerivedField)){
		Expression expression = feature.ref();

		if(missingValue != null){
			expression = PMMLUtil.createApply(PMMLFunctions.EQUAL, expression, PMMLUtil.createConstant(missingValue, feature.getDataType()));
		} else

		{
			expression = PMMLUtil.createApply(PMMLFunctions.ISMISSING, expression);
		}

		expression = PMMLUtil.createApply(PMMLFunctions.IF)
			.addExpressions(expression)
			.addExpressions(PMMLUtil.createConstant(replacementValue, feature.getDataType()), feature.ref());

		DerivedField derivedField = encoder.createDerivedField(FeatureUtil.createName("imputer", feature), field.getOpType(), field.getDataType(), expression);

		DataType dataType = derivedField.getDataType();
		switch(dataType){
			case INTEGER:
			case FLOAT:
			case DOUBLE:
				return new ContinuousFeature(encoder, derivedField);
			case STRING:
				return new StringFeature(encoder, derivedField);
			default:
				return new ObjectFeature(encoder, derivedField.getName(), derivedField.getDataType());
		}
	} else

	{
		throw new IllegalArgumentException();
	}
}
 
Example #19
Source File: ConcatTransformer.java    From jpmml-sklearn with GNU Affero General Public License v3.0 4 votes vote down vote up
@Override
public List<Feature> encodeFeatures(List<Feature> features, SkLearnEncoder encoder){
	String separator = getSeparator();

	Apply apply = PMMLUtil.createApply(PMMLFunctions.CONCAT);

	List<Expression> expressions = apply.getExpressions();

	for(int i = 0; i < features.size(); i++){
		Feature feature = features.get(i);

		if((i > 0) && !("").equals(separator)){
			expressions.add(PMMLUtil.createConstant(separator, DataType.STRING));
		}

		expressions.add(feature.ref());
	}

	DerivedField derivedField = encoder.createDerivedField(FeatureUtil.createName("concat", features), OpType.CATEGORICAL, DataType.STRING, apply);

	return Collections.singletonList(new StringFeature(encoder, derivedField));
}
 
Example #20
Source File: SVMConverter.java    From jpmml-r with GNU Affero General Public License v3.0 4 votes vote down vote up
private void scaleFeatures(RExpEncoder encoder){
	RGenericVector svm = getObject();

	RDoubleVector sv = svm.getDoubleElement("SV");
	RBooleanVector scaled = svm.getBooleanElement("scaled");
	RGenericVector xScale = svm.getGenericElement("x.scale");

	RStringVector rowNames = sv.dimnames(0);
	RStringVector columnNames = sv.dimnames(1);

	List<Feature> features = encoder.getFeatures();

	if((scaled.size() != columnNames.size()) || (scaled.size() != features.size())){
		throw new IllegalArgumentException();
	}

	RDoubleVector xScaledCenter = xScale.getDoubleElement("scaled:center");
	RDoubleVector xScaledScale = xScale.getDoubleElement("scaled:scale");

	for(int i = 0; i < columnNames.size(); i++){
		String columnName = columnNames.getValue(i);

		if(!scaled.getValue(i)){
			continue;
		}

		Feature feature = features.get(i);

		Double center = xScaledCenter.getElement(columnName);
		Double scale = xScaledScale.getElement(columnName);

		if(ValueUtil.isZero(center) && ValueUtil.isOne(scale)){
			continue;
		}

		ContinuousFeature continuousFeature = feature.toContinuousFeature();

		Expression expression = continuousFeature.ref();

		if(!ValueUtil.isZero(center)){
			expression = PMMLUtil.createApply(PMMLFunctions.SUBTRACT, expression, PMMLUtil.createConstant(center));
		} // End if

		if(!ValueUtil.isOne(scale)){
			expression = PMMLUtil.createApply(PMMLFunctions.DIVIDE, expression, PMMLUtil.createConstant(scale));
		}

		DerivedField derivedField = encoder.createDerivedField(FeatureUtil.createName("scale", feature), OpType.CONTINUOUS, DataType.DOUBLE, expression);

		features.set(i, new ContinuousFeature(encoder, derivedField));
	}
}
 
Example #21
Source File: MaxAbsScaler.java    From jpmml-sklearn with GNU Affero General Public License v3.0 3 votes vote down vote up
@Override
public List<Feature> encodeFeatures(List<Feature> features, SkLearnEncoder encoder){
	List<? extends Number> scale = getScale();

	ClassDictUtil.checkSize(features, scale);

	List<Feature> result = new ArrayList<>();

	for(int i = 0; i < features.size(); i++){
		Feature feature = features.get(i);

		Number value = scale.get(i);
		if(ValueUtil.isOne(value)){
			result.add(feature);

			continue;
		}

		ContinuousFeature continuousFeature = feature.toContinuousFeature();

		// "$name / scale"
		Apply apply = PMMLUtil.createApply(PMMLFunctions.DIVIDE, continuousFeature.ref(), PMMLUtil.createConstant(value));

		DerivedField derivedField = encoder.createDerivedField(FeatureUtil.createName("max_abs_scaler", continuousFeature), apply);

		result.add(new ContinuousFeature(encoder, derivedField));
	}

	return result;
}
 
Example #22
Source File: DurationTransformer.java    From jpmml-sklearn with GNU Affero General Public License v3.0 3 votes vote down vote up
@Override
public List<Feature> encodeFeatures(List<Feature> features, SkLearnEncoder encoder){
	GregorianCalendar epoch = getEpoch();
	String function = getFunction();

	LocalDateTime epochDateTime = CalendarUtil.toLocalDateTime(epoch);
	if(epochDateTime.getMonthValue() != 1 || epochDateTime.getDayOfMonth() != 1){
		throw new IllegalArgumentException(String.valueOf(epochDateTime));
	}

	int year = epochDateTime.getYear();

	String dateFunction = function;

	if(dateFunction.startsWith("date")){
		dateFunction = dateFunction.substring("date".length(), dateFunction.length());
	}

	dateFunction = CaseFormat.UPPER_CAMEL.to(CaseFormat.LOWER_UNDERSCORE, dateFunction);

	List<Feature> result = new ArrayList<>();

	for(int i = 0; i < features.size(); i++){
		ObjectFeature objectFeature = (ObjectFeature)features.get(i);

		FieldName name = FieldName.create(dateFunction + "(" + (FeatureUtil.getName(objectFeature)).getValue() + ", " + year + ")");

		DerivedField derivedField = encoder.ensureDerivedField(name, OpType.CONTINUOUS, DataType.INTEGER, () -> PMMLUtil.createApply(function, objectFeature.ref(), PMMLUtil.createConstant(year, DataType.INTEGER)));

		result.add(new ContinuousFeature(encoder, derivedField));
	}

	return result;
}
 
Example #23
Source File: TokenizerConverter.java    From jpmml-sparkml with GNU Affero General Public License v3.0 3 votes vote down vote up
@Override
public List<Feature> encodeFeatures(SparkMLEncoder encoder){
	Tokenizer transformer = getTransformer();

	Feature feature = encoder.getOnlyFeature(transformer.getInputCol());

	Apply apply = PMMLUtil.createApply(PMMLFunctions.LOWERCASE, feature.ref());

	DerivedField derivedField = encoder.createDerivedField(FeatureUtil.createName("lowercase", feature), OpType.CATEGORICAL, DataType.STRING, apply);

	return Collections.singletonList(new DocumentFeature(encoder, derivedField, "\\s+"));
}