An XGBoost Tree Ensemble Regression model was picked, but any model and its set of Learner and Predictor nodes can be used.
- Read the dataset about wines
- Partition the data in train and test
- Pick few test set instances rows to explain
- Create local samples for each instance in the input table (LIME Loop Start)
- Score the samples using the predictor node and a trained model
- Compute LIMEs, that is local model-agnostic explanations by training a local GLM using the samples and extracting the weights.
- Visualize them in the Composite View (Right Click > Open View)
Workflow
LIME Loop Nodes with a Custom Regression Model
External resources
Used extensions & nodes
Created with KNIME Analytics Platform version 4.6.1
- Go to item
- Go to item
- Go to item
- Go to item
- Go to item
- Go to item
Legal
By using or downloading the workflow, you agree to our terms and conditions.