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Neural Net (Mining Model Viewer View)

Use the Neural Net viewer to explore mining models that are based on the Microsoft Neural Network algorithm.

For More Information:Microsoft Neural Network Algorithm, Viewing a Mining Model with the Microsoft Neural Network Viewer

Options

  • Refresh viewer content
    Reload the mining model in the viewer.

  • Mining Model
    Choose a mining model to view that is contained in the current mining structure. The mining model will open in its associated viewer.

  • Viewer
    Choose a viewer to use to explore the selected mining model. This list includes the viewers that Microsoft SQL Server Analysis Services provides for each mining model, the Microsoft Mining Content viewer, and any plug-in viewers.

  • Input
    Choose the attributes and the attribute values that the model will use as inputs.

    Value

    Description

    Attribute

    Choose an input attribute.

    Value

    Choose a value for the input attribute.

  • Output
    Choose the attribute for the neural network model to use an output.

    Value

    Description

    Output Attribute

    Choose a predictable attribute.

    Value 1

    Choose a state of the predictable attribute to compare to the state that is contained in Value 2.

    Value 2

    Select a state of the predictable attribute to compare to the state that is contained in Value 1.

  • Variables
    Contains the following columns that describe the state of the predictable attribute that specific states of input attribute favor.

    Value

    Description

    Attribute

    An input attribute in the mining model.

    Value

    A state of the input attribute that is listed in Attribute.

    Favors <Value 1>

    May contain a bar that signifies if the input attribute and state listed in Variables and Value favors the output state selected in Value 1.

    Favors <Value 2>

    May contain a bar that signifies if the attribute and the state that are listed in Variables and Value favor the output state selected in Value 2.