Class

org.pmml4s.model

GeneralRegressionModel

Related Doc: package model

Permalink

class GeneralRegressionModel extends Model with HasWrappedGeneralRegressionAttributes

Definition of a general regression model. As the name says it, this is intended to support a multitude of regression models.

Linear Supertypes
Ordering
  1. Alphabetic
  2. By Inheritance
Inherited
  1. GeneralRegressionModel
  2. HasWrappedGeneralRegressionAttributes
  3. HasGeneralRegressionAttributes
  4. Model
  5. PmmlElement
  6. Serializable
  7. Serializable
  8. HasExtensions
  9. HasModelVerification
  10. Predictable
  11. HasTargetFields
  12. ModelLocation
  13. FieldScope
  14. HasField
  15. HasLocalTransformations
  16. HasTargets
  17. HasModelExplanation
  18. HasModelStats
  19. HasOutput
  20. HasMiningSchema
  21. HasWrappedModelAttributes
  22. HasModelAttributes
  23. HasVersion
  24. HasParent
  25. AnyRef
  26. Any
  1. Hide All
  2. Show All
Visibility
  1. Public
  2. All

Instance Constructors

  1. new GeneralRegressionModel(parent: Model, attributes: GeneralRegressionAttributes, miningSchema: MiningSchema, parameterList: ParameterList, factorList: Option[FactorList], covariateList: Option[CovariateList], ppMatrix: PPMatrix, pCovMatrix: Option[PCovMatrix], paramMatrix: ParamMatrix, eventValues: Option[EventValues], baseCumHazardTables: Option[BaseCumHazardTables], output: Option[Output] = None, targets: Option[Targets] = None, localTransformations: Option[LocalTransformations] = None, modelStats: Option[ModelStats] = None, modelExplanation: Option[ModelExplanation] = None, modelVerification: Option[ModelVerification] = None, extensions: Seq[Extension] = immutable.Seq.empty)

    Permalink

Value Members

  1. final def !=(arg0: Any): Boolean

    Permalink
    Definition Classes
    AnyRef → Any
  2. final def ##(): Int

    Permalink
    Definition Classes
    AnyRef → Any
  3. final def ==(arg0: Any): Boolean

    Permalink
    Definition Classes
    AnyRef → Any
  4. def algorithmName: Option[String]

    Permalink

    The algorithm name is free-type and can be any description for the specific algorithm that produced the model.

    The algorithm name is free-type and can be any description for the specific algorithm that produced the model. This attribute is for information only.

    Definition Classes
    HasWrappedModelAttributesHasModelAttributes
  5. def anyMissing(series: Series): Boolean

    Permalink

    Returns true if there are any missing values of all input fields in the specified series.

    Returns true if there are any missing values of all input fields in the specified series.

    Attributes
    protected
    Definition Classes
    Model
  6. final def asInstanceOf[T0]: T0

    Permalink
    Definition Classes
    Any
  7. val attributes: GeneralRegressionAttributes

    Permalink

    Common attributes of this model

    Common attributes of this model

    Definition Classes
    GeneralRegressionModelHasWrappedGeneralRegressionAttributesHasWrappedModelAttributes
  8. val baseCumHazardTables: Option[BaseCumHazardTables]

    Permalink
  9. def baselineStrataVariable: Option[Field]

    Permalink

    If modelType is CoxRegression, this variable is optional, if present it is used during scoring (see the description of scoring procedures below).

    If modelType is CoxRegression, this variable is optional, if present it is used during scoring (see the description of scoring procedures below). This attribute must refer to a DataField or a DerivedField containing a categorical variable.

    Definition Classes
    HasWrappedGeneralRegressionAttributesHasGeneralRegressionAttributes
  10. def candidateOutputFields: Array[OutputField]

    Permalink
    Definition Classes
    HasOutput
  11. def candidateOutputSchema: StructType

    Permalink

    The schema of candidate outputs.

    The schema of candidate outputs.

    Definition Classes
    Model
  12. def classes(name: String): Array[Any]

    Permalink

    Returns class labels of the specified target.

    Returns class labels of the specified target.

    Definition Classes
    Model
  13. lazy val classes: Array[Any]

    Permalink

    The class labels in a classification model.

    The class labels in a classification model.

    Definition Classes
    Model
  14. def clone(): AnyRef

    Permalink
    Attributes
    protected[java.lang]
    Definition Classes
    AnyRef
    Annotations
    @throws( ... )
  15. def combineOutputFields(listA: Array[OutputField], listB: Array[OutputField]): Array[OutputField]

    Permalink
    Definition Classes
    HasOutput
  16. def containInterResults: Boolean

    Permalink
    Definition Classes
    HasOutput
  17. val covariateList: Option[CovariateList]

    Permalink
  18. def createOutputs(): ModelOutputs

    Permalink

    Creates an object of GeneralRegressionOutputs that is for writing into an output series.

    Creates an object of GeneralRegressionOutputs that is for writing into an output series.

    Definition Classes
    GeneralRegressionModelModel
  19. def cumulativeLink: Option[CumulativeLinkFunction]

    Permalink

    Specifies the type of cumulative link function to use when ordinalMultinomial model type is specified.

    Specifies the type of cumulative link function to use when ordinalMultinomial model type is specified.

    Definition Classes
    HasWrappedGeneralRegressionAttributesHasGeneralRegressionAttributes
  20. var customOutputFields: Array[OutputField]

    Permalink

    User-defined custom output fields, both the internal output of PMML and predefined output are ignored when the field is specified.

    User-defined custom output fields, both the internal output of PMML and predefined output are ignored when the field is specified.

    Definition Classes
    HasOutput
  21. def dVersion: Double

    Permalink

    Returns PMML version as a double value

    Returns PMML version as a double value

    Definition Classes
    HasVersion
  22. def dataDictionary: DataDictionary

    Permalink

    The data dictionary of this model.

    The data dictionary of this model.

    Definition Classes
    Model
  23. def defaultOutputFields: Array[OutputField]

    Permalink

    Returns all candidates output fields of this model when there is no output specified explicitly.

    Returns all candidates output fields of this model when there is no output specified explicitly.

    Definition Classes
    ModelHasOutput
  24. def distParameter: Option[Double]

    Permalink

    Specifies an ancillary parameter value for the negative binomial distribution.

    Specifies an ancillary parameter value for the negative binomial distribution.

    Definition Classes
    HasWrappedGeneralRegressionAttributesHasGeneralRegressionAttributes
  25. def distribution: Option[Distribution]

    Permalink

    The probability distribution of the dependent variable for generalizedLinear model may be specified as normal, binomial, gamma, inverse Gaussian, negative binomial, or Poisson.

    The probability distribution of the dependent variable for generalizedLinear model may be specified as normal, binomial, gamma, inverse Gaussian, negative binomial, or Poisson. Note that binomial distribution can be used in two situations: either the target is categorical with two categories or a trialsVariable or trialsValue is specified.

    Definition Classes
    HasWrappedGeneralRegressionAttributesHasGeneralRegressionAttributes
  26. def encode(series: Series): DSeries

    Permalink

    Encodes the input series.

    Encodes the input series.

    Attributes
    protected
    Definition Classes
    Model
  27. def endTimeVariable: Option[Field]

    Permalink

    If modelType is CoxRegression, this variable is required during scoring (see the description of scoring procedures below).

    If modelType is CoxRegression, this variable is required during scoring (see the description of scoring procedures below). This attribute must refer to a DataField or a DerivedField containing a continuous variable.

    Definition Classes
    HasWrappedGeneralRegressionAttributesHasGeneralRegressionAttributes
  28. final def eq(arg0: AnyRef): Boolean

    Permalink
    Definition Classes
    AnyRef
  29. def equals(arg0: Any): Boolean

    Permalink
    Definition Classes
    AnyRef → Any
  30. val eventValues: Option[EventValues]

    Permalink
  31. val extensions: Seq[Extension]

    Permalink
    Definition Classes
    GeneralRegressionModelHasExtensions
  32. val factorList: Option[FactorList]

    Permalink
  33. def field(name: String): Field

    Permalink

    Returns the field of a given name.

    Returns the field of a given name.

    Definition Classes
    HasField
    Exceptions thrown

    FieldNotFoundException if a field with the given name does not exist

  34. def fieldsOfUsageType(typ: UsageType): Array[Field]

    Permalink

    Get fields by its usage type: 'active', 'target', 'predicted', 'group' and so on

    Get fields by its usage type: 'active', 'target', 'predicted', 'group' and so on

    Definition Classes
    Model
  35. def finalize(): Unit

    Permalink
    Attributes
    protected[java.lang]
    Definition Classes
    AnyRef
    Annotations
    @throws( classOf[java.lang.Throwable] )
  36. def findBaselineCell(baselineCells: Array[BaselineCell], endTime: Double): BaselineCell

    Permalink
  37. def functionName: MiningFunction

    Permalink

    Describe the kind of mining model, e.g., whether it is intended to be used for clustering or for classification.

    Describe the kind of mining model, e.g., whether it is intended to be used for clustering or for classification.

    Definition Classes
    HasWrappedModelAttributesHasModelAttributes
  38. final def getClass(): Class[_]

    Permalink
    Definition Classes
    AnyRef → Any
  39. def getField(name: String): Option[Field]

    Permalink

    Returns the field of a given name, None if a field with the given name does not exist.

    Returns the field of a given name, None if a field with the given name does not exist.

    Definition Classes
    ModelHasField
  40. def hasExtensions: Boolean

    Permalink
    Definition Classes
    HasExtensions
  41. def hasTarget: Boolean

    Permalink
    Definition Classes
    HasTargetFields
  42. def hashCode(): Int

    Permalink
    Definition Classes
    AnyRef → Any
  43. def header: Header

    Permalink

    The header of this model.

    The header of this model.

    Definition Classes
    Model
  44. lazy val implicitInputDerivedFields: Array[Field]

    Permalink

    Implicit referenced derived fields for the sub-model except ones defined in the mining schema.

    Implicit referenced derived fields for the sub-model except ones defined in the mining schema.

    Definition Classes
    Model
  45. def importances: Map[String, Double]

    Permalink

    Returns importances of predictors.

    Returns importances of predictors.

    Definition Classes
    Model
  46. def inferClasses: Array[Any]

    Permalink

    The sub-classes can override this method to provide classes of target inside model.

    The sub-classes can override this method to provide classes of target inside model.

    Definition Classes
    Model
  47. lazy val inputDerivedFields: Array[Field]

    Permalink

    Referenced derived fields.

    Referenced derived fields.

    Definition Classes
    Model
  48. lazy val inputFields: Array[Field]

    Permalink

    All input fields in an array.

    All input fields in an array.

    Definition Classes
    Model
  49. lazy val inputNames: Array[String]

    Permalink

    All input names in an array.

    All input names in an array.

    Definition Classes
    Model
  50. lazy val inputSchema: StructType

    Permalink

    The schema of inputs.

    The schema of inputs.

    Definition Classes
    Model
  51. def isAssociationRules: Boolean

    Permalink

    Tests if this is a association rules model.

    Tests if this is a association rules model.

    Definition Classes
    HasModelAttributes
  52. def isBinary: Boolean

    Permalink

    Tests if the target is a binary field

    Tests if the target is a binary field

    Definition Classes
    Model
  53. def isClassification(name: String): Boolean

    Permalink

    Tests if this is a classification model of the specified target, it's applicable for multiple targets.

    Tests if this is a classification model of the specified target, it's applicable for multiple targets.

    Definition Classes
    Model
  54. def isClassification: Boolean

    Permalink

    Tests if this is a classification model.

    Tests if this is a classification model.

    Definition Classes
    ModelHasModelAttributes
  55. def isClustering: Boolean

    Permalink

    Tests if this is a clustering model.

    Tests if this is a clustering model.

    Definition Classes
    HasModelAttributes
  56. final def isInstanceOf[T0]: Boolean

    Permalink
    Definition Classes
    Any
  57. def isMixed: Boolean

    Permalink

    Tests if this is a mixed model.

    Tests if this is a mixed model.

    Definition Classes
    HasModelAttributes
  58. def isOrdinal: Boolean

    Permalink

    Tests if the target is an ordinal field

    Tests if the target is an ordinal field

    Definition Classes
    Model
  59. def isPredictionOnly: Boolean

    Permalink
    Definition Classes
    HasOutput
  60. def isRegression(name: String): Boolean

    Permalink

    Tests if this is a regression model of the specified target, it's applicable for multiple targets.

    Tests if this is a regression model of the specified target, it's applicable for multiple targets.

    Definition Classes
    Model
  61. def isRegression: Boolean

    Permalink

    Tests if this is a regression model.

    Tests if this is a regression model.

    Definition Classes
    ModelHasModelAttributes
  62. def isScorable: Boolean

    Permalink

    Indicates if the model is valid for scoring.

    Indicates if the model is valid for scoring. If this attribute is true or if it is missing, then the model should be processed normally. However, if the attribute is false, then the model producer has indicated that this model is intended for information purposes only and should not be used to generate results.

    Definition Classes
    HasWrappedModelAttributesHasModelAttributes
  63. def isSequences: Boolean

    Permalink

    Tests if this is a sequences model.

    Tests if this is a sequences model.

    Definition Classes
    HasModelAttributes
  64. def isSubModel: Boolean

    Permalink
    Definition Classes
    ModelLocation
  65. def isTimeSeries: Boolean

    Permalink

    Tests if this is a time series model.

    Tests if this is a time series model.

    Definition Classes
    HasModelAttributes
  66. def isTopLevelModel: Boolean

    Permalink
    Definition Classes
    ModelLocation
  67. def linkFunction: Option[LinkFunction]

    Permalink

    Specifies the type of link function to use when generalizedLinear model type is specified.

    Specifies the type of link function to use when generalizedLinear model type is specified.

    Definition Classes
    HasWrappedGeneralRegressionAttributesHasGeneralRegressionAttributes
  68. def linkParameter: Option[Double]

    Permalink

    Specifies an additional number the following link functions need: oddspower and power.

    Specifies an additional number the following link functions need: oddspower and power.

    Definition Classes
    HasWrappedGeneralRegressionAttributesHasGeneralRegressionAttributes
  69. val localTransformations: Option[LocalTransformations]

    Permalink

    The optional local transformations.

    The optional local transformations.

    Definition Classes
    GeneralRegressionModelHasLocalTransformations
  70. val miningSchema: MiningSchema

    Permalink
  71. def modelDF: Option[Double]

    Permalink

    The value of degrees of freedom for the model.

    The value of degrees of freedom for the model. This value is needed for computing confidence intervals for predicted values.

    Definition Classes
    HasWrappedGeneralRegressionAttributesHasGeneralRegressionAttributes
  72. def modelElement: ModelElement

    Permalink

    Model element type.

    Model element type.

    Definition Classes
    GeneralRegressionModelModel
  73. val modelExplanation: Option[ModelExplanation]

    Permalink
  74. def modelName: Option[String]

    Permalink

    Identifies the model with a unique name in the context of the PMML file.

    Identifies the model with a unique name in the context of the PMML file. This attribute is not required. Consumers of PMML models are free to manage the names of the models at their discretion.

    Definition Classes
    HasWrappedModelAttributesHasModelAttributes
  75. val modelStats: Option[ModelStats]

    Permalink
    Definition Classes
    GeneralRegressionModelHasModelStats
  76. def modelType: GeneralModelType

    Permalink

    Specifies the type of regression model in use.

    Specifies the type of regression model in use.

    Definition Classes
    HasWrappedGeneralRegressionAttributesHasGeneralRegressionAttributes
  77. val modelVerification: Option[ModelVerification]

    Permalink
  78. def multiTargets: Boolean

    Permalink
    Definition Classes
    HasTargetFields
  79. final def ne(arg0: AnyRef): Boolean

    Permalink
    Definition Classes
    AnyRef
  80. final def notify(): Unit

    Permalink
    Definition Classes
    AnyRef
  81. final def notifyAll(): Unit

    Permalink
    Definition Classes
    AnyRef
  82. lazy val nullSeries: Series

    Permalink

    A series with all null values is returned when can not produce a result.

    A series with all null values is returned when can not produce a result.

    Definition Classes
    Model
  83. def numClasses(name: String): Int

    Permalink

    Returns the number of class labels of the specified target.

    Returns the number of class labels of the specified target.

    Definition Classes
    Model
  84. lazy val numClasses: Int

    Permalink

    The number of class labels in a classification model.

    The number of class labels in a classification model.

    Definition Classes
    Model
  85. def offsetValue: Option[Double]

    Permalink

    If present, this value is used during scoring generalizedLinear, ordinalMultinomial, or multinomialLogistic models.

    If present, this value is used during scoring generalizedLinear, ordinalMultinomial, or multinomialLogistic models. It works like a user-specified intercept (see the description of the scoring procedures below). At most one of the attributes offsetVariable and offsetValue can be present in a model.

    Definition Classes
    HasWrappedGeneralRegressionAttributesHasGeneralRegressionAttributes
  86. def offsetVariable: Option[Field]

    Permalink

    If present, this variable is used during scoring generalizedLinear, ordinalMultinomial, or multinomialLogistic models (see the description of scoring procedures below).

    If present, this variable is used during scoring generalizedLinear, ordinalMultinomial, or multinomialLogistic models (see the description of scoring procedures below). This attribute must refer to a DataField or a DerivedField.

    Definition Classes
    HasWrappedGeneralRegressionAttributesHasGeneralRegressionAttributes
  87. def opType(name: String): OpType

    Permalink

    Returns optype of the specified target.

    Returns optype of the specified target.

    Definition Classes
    Model
  88. lazy val opType: OpType

    Permalink

    When Target specifies optype then it overrides the optype attribute in a corresponding MiningField, if it exists.

    When Target specifies optype then it overrides the optype attribute in a corresponding MiningField, if it exists. If the target does not specify optype then the MiningField is used as default. And, in turn, if the MiningField does not specify an optype, it is taken from the corresponding DataField. In other words, a MiningField overrides a DataField, and a Target overrides a MiningField.

    Definition Classes
    Model
  89. val output: Option[Output]

    Permalink
    Definition Classes
    GeneralRegressionModelHasOutput
  90. def outputFields: Array[OutputField]

    Permalink
    Definition Classes
    HasOutput
  91. def outputIndex(feature: ResultFeature, value: Option[Any] = None): Int

    Permalink
    Definition Classes
    HasOutput
  92. def outputNames: Array[String]

    Permalink
    Definition Classes
    HasOutput
  93. def outputSchema: StructType

    Permalink

    The schema of final outputs.

    The schema of final outputs.

    Definition Classes
    Model
  94. val pCovMatrix: Option[PCovMatrix]

    Permalink
  95. val paramMatrix: ParamMatrix

    Permalink
  96. val parameterList: ParameterList

    Permalink
  97. var parent: Model

    Permalink

    The parent model.

    The parent model.

    Definition Classes
    GeneralRegressionModelHasParent
  98. def postClassification(name: String = null): (Any, Map[Any, Double])

    Permalink
    Attributes
    protected
    Definition Classes
    Model
  99. def postPredictedValue(outputs: MutablePredictedValue, name: String = null): MutablePredictedValue

    Permalink
    Attributes
    protected
    Definition Classes
    Model
  100. def postRegression(predictedValue: Any, name: String = null): Any

    Permalink
    Attributes
    protected
    Definition Classes
    Model
  101. val ppMatrix: PPMatrix

    Permalink
  102. def predict(values: Series): Series

    Permalink

    Predicts values for a given data series.

    Predicts values for a given data series.

    Definition Classes
    GeneralRegressionModelModelPredictable
  103. def predict(it: Iterator[Series]): Iterator[Series]

    Permalink
    Definition Classes
    Model
  104. def predict(json: String): String

    Permalink

    Predicts one or multiple records in json format, there are two formats supported:

    Predicts one or multiple records in json format, there are two formats supported:

    - ‘records’ : list like [{column -> value}, … , {column -> value}] - ‘split’ : dict like {‘columns’ -> [columns], ‘data’ -> [values]}

    json

    Records in json

    returns

    Results in json

    Definition Classes
    Model
  105. def predict(values: List[Any]): List[Any]

    Permalink
    Definition Classes
    Model
  106. def predict[T](values: Array[T]): Array[Any]

    Permalink

    Predicts values for a given Array, and the order of those values is supposed as same as the input fields list

    Predicts values for a given Array, and the order of those values is supposed as same as the input fields list

    Definition Classes
    Model
  107. def predict(values: (String, Any)*): Seq[(String, Any)]

    Permalink

    Predicts values for a given list of key/value pairs.

    Predicts values for a given list of key/value pairs.

    Definition Classes
    Model
  108. def predict(values: Map[String, Any]): Map[String, Any]

    Permalink

    Predicts values for a given data map of Java.

    Predicts values for a given data map of Java.

    Definition Classes
    Model
  109. def predict(values: Map[String, Any]): Map[String, Any]

    Permalink

    Predicts values for a given data map.

    Predicts values for a given data map.

    Definition Classes
    Model
  110. lazy val predictedValueIndex: Int

    Permalink
    Definition Classes
    HasOutput
  111. def prepare(series: Series): (Series, Boolean)

    Permalink

    Pre-process the input series.

    Pre-process the input series.

    Attributes
    protected
    Definition Classes
    Model
  112. def probabilitiesSupported: Boolean

    Permalink

    Tests if probabilities of categories of target can be produced by this model.

    Tests if probabilities of categories of target can be produced by this model.

    Definition Classes
    Model
  113. def result(series: Series, modelOutputs: ModelOutputs, fields: Array[OutputField] = Array.empty): Series

    Permalink
    Attributes
    protected
    Definition Classes
    Model
  114. def setOutputFields(outputFields: Array[OutputField]): GeneralRegressionModel.this.type

    Permalink
    Definition Classes
    HasOutput
  115. def setParent(parent: Model): GeneralRegressionModel.this.type

    Permalink
    Definition Classes
    HasParent
  116. def setSupplementOutput(value: Boolean): GeneralRegressionModel.this.type

    Permalink
    Definition Classes
    HasOutput
  117. def singleTarget: Boolean

    Permalink
    Definition Classes
    HasTargetFields
  118. def size: Int

    Permalink
    Definition Classes
    HasTargetFields
  119. def startTimeVariable: Option[Field]

    Permalink

    If modelType is CoxRegression, this variable is optional, it is not used during scoring but is an important piece of information about model building.

    If modelType is CoxRegression, this variable is optional, it is not used during scoring but is an important piece of information about model building. This attribute must refer to a DataField or a DerivedField containing a continuous variable.

    Definition Classes
    HasWrappedGeneralRegressionAttributesHasGeneralRegressionAttributes
  120. def statusVariable: Option[Field]

    Permalink

    If modelType is CoxRegression, this variable is optional.

    If modelType is CoxRegression, this variable is optional. This attribute must refer to a DataField or a DerivedField.

    Definition Classes
    HasWrappedGeneralRegressionAttributesHasGeneralRegressionAttributes
  121. def subjectIDVariable: Option[Field]

    Permalink

    If modelType is CoxRegression, this variable is optional, it is not used during scoring but is an important piece of information about model building.

    If modelType is CoxRegression, this variable is optional, it is not used during scoring but is an important piece of information about model building. This attribute must refer to a DataField or a DerivedField. Explicitly listing all categories of this variable is not recommended.

    Definition Classes
    HasWrappedGeneralRegressionAttributesHasGeneralRegressionAttributes
  122. var supplementOutput: Boolean

    Permalink

    A flag for whether to return those predefined output fields not exist in the output element explicitly.

    A flag for whether to return those predefined output fields not exist in the output element explicitly.

    Definition Classes
    HasOutput
  123. final def synchronized[T0](arg0: ⇒ T0): T0

    Permalink
    Definition Classes
    AnyRef
  124. lazy val targetClasses: Map[String, Array[Any]]

    Permalink

    The class labels of all categorical targets.

    The class labels of all categorical targets.

    Definition Classes
    Model
  125. lazy val targetField: Field

    Permalink

    The first target field for the supervised model.

    The first target field for the supervised model.

    Definition Classes
    Model
  126. lazy val targetFields: Array[Field]

    Permalink

    All target fields in an array.

    All target fields in an array. Multiple target fields are allowed. It depends on the kind of the model whether prediction of multiple fields is supported.

    Definition Classes
    Model
  127. def targetFieldsOfResidual: Array[Field]

    Permalink

    Returns targets that are residual values to be computed, the input data must include target values.

    Returns targets that are residual values to be computed, the input data must include target values.

    Definition Classes
    HasOutput
  128. def targetName: String

    Permalink

    Name of the first target for the supervised model.

    Name of the first target for the supervised model.

    Definition Classes
    HasTargetFields
  129. lazy val targetNames: Array[String]

    Permalink

    All target names in an array.

    All target names in an array.

    Definition Classes
    ModelHasTargetFields
  130. def targetNamesOfResidual: Array[String]

    Permalink
    Definition Classes
    HasOutput
  131. def targetReferenceCategory: Option[String]

    Permalink

    Used for specifying the reference category of the target variable in a multinomial classification model.

    Used for specifying the reference category of the target variable in a multinomial classification model. Normally the reference category is the one from DataDictionary that does not appear in the ParamMatrix, but when several models are combined in one PMML file an explicit specification is needed.

    Definition Classes
    HasWrappedGeneralRegressionAttributesHasGeneralRegressionAttributes
  132. def targetVariableName: Option[String]

    Permalink

    Name of the target variable (also called response variable).

    Name of the target variable (also called response variable). This attribute has been deprecated since PMML 3.0. If present, it should match the name of the target MiningField.

    Definition Classes
    HasWrappedGeneralRegressionAttributesHasGeneralRegressionAttributes
  133. val targets: Option[Targets]

    Permalink
    Definition Classes
    GeneralRegressionModelHasTargets
  134. def toString(): String

    Permalink
    Definition Classes
    AnyRef → Any
  135. def transformationDictionary: Option[TransformationDictionary]

    Permalink

    The optional transformation dictionary.

    The optional transformation dictionary.

    Definition Classes
    Model
  136. def trialsValue: Option[Int]

    Permalink

    A positive integer used during scoring some generalizedLinear models (see the description of scoring procedure below).

    A positive integer used during scoring some generalizedLinear models (see the description of scoring procedure below). At most one of the attributes trialsVariable and trialsValue can be present in a model. This attribute can only be used when the distribution is binomial.

    Definition Classes
    HasWrappedGeneralRegressionAttributesHasGeneralRegressionAttributes
  137. def trialsVariable: Option[Field]

    Permalink

    Specifies an additional variable used during scoring some generalizedLinear models (see the description of scoring procedure below).

    Specifies an additional variable used during scoring some generalizedLinear models (see the description of scoring procedure below). This attribute must refer to a DataField or a DerivedField. This attribute can only be used when the distribution is binomial.

    Definition Classes
    HasWrappedGeneralRegressionAttributesHasGeneralRegressionAttributes
  138. def unionCandidateOutputFields: Array[OutputField]

    Permalink
    Definition Classes
    HasOutput
  139. def unionOutputFields: Array[OutputField]

    Permalink
    Definition Classes
    HasOutput
  140. lazy val usedFields: Array[Field]

    Permalink

    Setup indices to retrieve data from series faster by index instead of name, the index is immutable when model is built because the model object could run in multiple threads, so it's important make sure the model object is totally immutable.

    Setup indices to retrieve data from series faster by index instead of name, the index is immutable when model is built because the model object could run in multiple threads, so it's important make sure the model object is totally immutable.

    Setup indices of targets that are usually not used by the scoring process, they are only used when residual values to be computed.

    Definition Classes
    Model
  141. lazy val usedSchema: StructType

    Permalink

    The schema of used fields.

    The schema of used fields.

    Definition Classes
    Model
  142. def version: String

    Permalink

    PMML version.

    PMML version.

    Definition Classes
    HasVersion
  143. final def wait(): Unit

    Permalink
    Definition Classes
    AnyRef
    Annotations
    @throws( ... )
  144. final def wait(arg0: Long, arg1: Int): Unit

    Permalink
    Definition Classes
    AnyRef
    Annotations
    @throws( ... )
  145. final def wait(arg0: Long): Unit

    Permalink
    Definition Classes
    AnyRef
    Annotations
    @throws( ... )

Inherited from Model

Inherited from PmmlElement

Inherited from Serializable

Inherited from Serializable

Inherited from HasExtensions

Inherited from HasModelVerification

Inherited from Predictable

Inherited from HasTargetFields

Inherited from ModelLocation

Inherited from FieldScope

Inherited from HasField

Inherited from HasLocalTransformations

Inherited from HasTargets

Inherited from HasModelExplanation

Inherited from HasModelStats

Inherited from HasOutput

Inherited from HasMiningSchema

Inherited from HasWrappedModelAttributes

Inherited from HasModelAttributes

Inherited from HasVersion

Inherited from HasParent

Inherited from AnyRef

Inherited from Any

Ungrouped