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Represents the type of the MiningContentNode.
Namespace: Microsoft.AnalysisServices.AdomdClient
Assembly: Microsoft.AnalysisServices.AdomdClient (in microsoft.analysisservices.adomdclient.dll)
Syntax
'Declaration
Public Enumeration MiningNodeType
public enum MiningNodeType
public enum class MiningNodeType
public enum MiningNodeType
public enum MiningNodeType
Members
Member name | Description |
---|---|
AssociationRule | The node represents an association rule detected by the algorithm. |
Cluster | The node represents a cluster detected by the algorithm. |
CustomBase | Represents the starting point for custom node types. Custom node types must be integers greater in value than this constant. This type is used by plug-in algorithms. |
Distribution | The node represents a leaf of a classification tree. |
InputAttribute | The node corresponds to a predictable attribute. |
InputAttributeState | The node contains statistics about the states of an input attribute. |
Interior | The node represents an interior split node in a classification tree. |
ItemSet | The node represents an itemset detected by the algorithm |
Model | The root content node. This node applies to all algorithms. |
NaiveBayesMarginalStatNode | The node containing marginal statistics about the training set, stored in a format used by the Naïve Bayes algorithm. |
NNetHiddenLayer | The node which groups together the nodes that describe the hidden layer. This type is used with neural network algorithms. |
NNetHiddenNode | The node is a node of the hidden layer. This type is used with neural network algorithms. |
NNetInputLayer | The node which groups together the nodes of the input layer. This type is used with neural network algorithms. |
NNetInputNode | The node is a node of the input layer. This node will usually match an input attribute and the corresponding states. This type is used with neural network algorithms. |
NNetMarginalNode | The node containing marginal statistics about the training set, stored in a format used by the algorithm. This type is used with neural network algorithms. |
NNetOutputLayer | The node which groups together the nodes of the output layer. This type is used with neural network algorithms. |
NNetOutputNode | The node is a node of the output layer. This node will usually match an output attribute and the corresponding states. This type is used with neural network algorithms. |
NNetSubnetwork | The node contains one sub-network. This type is used with neural network algorithms. |
PredictableAttribute | The node corresponds to a predictable attribute. |
RegressionTreeRoot | The node is the root of a regression tree. |
Sequence | The top node for a Markov model component of a sequence cluster. This node will have a node of type Cluster as a parent, and children of type Transition. |
TimeSeries | The non-root node of a time series tree. |
Transition | The node representing a row of a Markov transition matrix. This node will have a node of type Sequence as a parent, and no children. |
Tree | The node is the root node of a classification tree. |
TsTree | The root node of a time series tree that corresponds to a predictable time series. |
Unknown | An unknown node type. |
Platforms
Development Platforms
For a list of the supported platforms, see Hardware and Software Requirements for Installing SQL Server 2005.
Target Platforms
For a list of the supported platforms, see Hardware and Software Requirements for Installing SQL Server 2005.