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05_Random_Forest_exercise

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Oct 29, 2024 5:36 AM
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Random Forest - exercise

Introduction to Machine Learning Algorithms course - Session 2
Exercise 3
- Train a Random Forest model
- Apply the model to the test set
- Evaluate the model performance with the Scorer node
- Perform parameter optimization

External resources

  • Slides (Introduction to ML Algorithms course)
  • Random Forest
  • Ames Housing Dataset on kaggle
  • Description of the Ames Iowa Housing Data
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Created with KNIME Analytics Platform version 5.3.2
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