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04_​Partial_​Dependence_​Pre-processing

Partial Dependence Plot with AutoML (Regression)

This is an example for visualizing a partial dependence plot and an ICE curves plot in KNIME.
AutoML (Regression) Component was used to select the best model for the given data, but any model and its set of Learner and Predictor nodes can be used.

- Read the test and train dataset
- Select 100 rows from test dataset to be explained by Partial Dependence/ICE Plots
- Create the samples via the apposite shared component Partial Dependence Pre-processing
- Score the samples using the Workflow Executor and AutoML (Regression) Component.
- Visualize the Partial Dependence/ICE Plot and customize it directly in the View (Execute > Right Click > Open View)
- Apply and Close to save the custom in-view settings




This example workflows shows how to visualize a partial dependence plot and an ICE curves plot.AutoML (Regression) component is used to select the best model for the input data, but any model and its set of Learner and Predictor nodes can be used.See View -> Description for more information about what the workflow does. Handle Missing Value top input: curves databottom input: test datacolors by ground truthsample the data execute up-streambefore configurationtrain datatest dataHandle Missing ValueSelect 100 rowsrandomlytop input: curves databottom input: test dataHighMediumSmalltop input: curves databottom input: test datatop input: curves databottom input: test dataMissing Value PartialDependence/ICE Plot Color Manager Workflow Executor Partial DependencePre-processing AutoML (Regression) File Reader File Reader Missing Value Row Sampling Row Splitter PartialDependence/ICE Plot ReferenceRow Filter Row Splitter ReferenceRow Filter ReferenceRow Filter PartialDependence/ICE Plot PartialDependence/ICE Plot This example workflows shows how to visualize a partial dependence plot and an ICE curves plot.AutoML (Regression) component is used to select the best model for the input data, but any model and its set of Learner and Predictor nodes can be used.See View -> Description for more information about what the workflow does. Handle Missing Valuetop input: curves databottom input: test datacolors by ground truthsample the data execute up-streambefore configurationtrain datatest dataHandle Missing ValueSelect 100 rowsrandomlytop input: curves databottom input: test dataHighMediumSmalltop input: curves databottom input: test datatop input: curves databottom input: test dataMissing Value PartialDependence/ICE Plot Color Manager Workflow Executor Partial DependencePre-processing AutoML (Regression) File Reader File Reader Missing Value Row Sampling Row Splitter PartialDependence/ICE Plot ReferenceRow Filter Row Splitter ReferenceRow Filter ReferenceRow Filter PartialDependence/ICE Plot PartialDependence/ICE Plot

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