Workflow
02_Explainable_Artificial_Intelligence_(XAI)
XAI View Component with AutoML
This application is a simple example of AutoML with KNIME Software for binary and multiclass classification. The output models are then explained via the interactive XAI View, which works for any model the AutoML component produces. Machine Learning Interpretability (MLI) techniques used: SHAP explanations/reason codes, partial dependence, individual conditional expectation (ICE) curves and a surrogate decision tree.
The workflow also works locally on KNIME Analytics Platform. Make sure to use "Apply and Close" in bottom-right corner of each view.
External resources
Used extensions & nodes
Created with KNIME Analytics Platform version 5.2.3
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KNIME Machine Learning Interpretability Extension
KNIME AG, Zurich, Switzerland
Versions 4.6.0, 5.2.0
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