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01_​Global_​Feature_​Importance_​Example

Compute and Visualize Global Feature Importance Metrics

This application is a simple example of inspecting global feature importance for binary and multiclass classification with KNIME Software. The key of this example is the Global Feature Importance component verified and developed by the KNIME Team. In this example, the Wine quality data set is partitioned to training and test samples. Then, the black box model (Neural Network) is trained on the standardly pre-processed training data using the AutoML component. The Workflow Object capturing the pre-processing and the model is provided as an input for the Global Feature Importance component together with the test data. The component provides the global feature importance according to four techniques: three interpretable Global Surrogate Models (GLM, Decision Tree, and Random Forest) and Permutation Feature Importance.

Top: train setBottom: test set1. Standard pre-processing2. Training and optimization of a Neural networkWine qualityhistorical dataInspect global feature importancefor the wine quality classificationPartitioning AutoML CSV Reader Global FeatureImportance Top: train setBottom: test set1. Standard pre-processing2. Training and optimization of a Neural networkWine qualityhistorical dataInspect global feature importancefor the wine quality classificationPartitioning AutoML CSV Reader Global FeatureImportance

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