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The C4.5 Project

The C4.5 Project. Overview of algorithm with results of experimentation. Summary. Terminology C4.5 vs. ID3 Datasets C4.5 results on datasets. Terminology. Training cases Test cases Unseen cases. Gain vs. Gain Ratio. ID3 creates complex trees using gain C4.5 uses a different measure

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The C4.5 Project

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  1. The C4.5 Project Overview of algorithm with results of experimentation

  2. Summary • Terminology • C4.5 vs. ID3 • Datasets • C4.5 results on datasets

  3. Terminology • Training cases • Test cases • Unseen cases

  4. Gain vs. Gain Ratio • ID3 creates complex trees using gain • C4.5 uses a different measure • Gain ratio considers what ID3 does not • Minimum number of instances per leaf node • Meaning: C4.5 creates more useful models

  5. Missing Data • ID3 does not make allowances • C4.5 adjusts the gain ratio to favor attributes with existing values • Classifying training and unseen cases • C4.5 uses probabilistic weights

  6. Pruning • ID3 produces complex trees • C4.5 prunes trees • Pessimistic error prediction • Subtree raising • Subtree replacement

  7. Subtree Raising

  8. Subtree Replacement

  9. Features of C4.5 • Rules • Consulter • Categorical data • Windowing

  10. Windowing

  11. Iris Dataset

  12. Wine Dataset

  13. Results of C4.5 on Datasets • Iris dataset: similar results

  14. Results of C4.5 on Datasets • Wine dataset: different results • Possible reasons for differences

  15. Closing Summary • C4.5 vs. ID3 • Gain vs. gain ratio • Missing data • Pruning • Features of C4.5 • C4.5 Results • Iris – similar results • Wine – different results

  16. The End reasonable questions welcomed.

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