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Decision Tree Learning
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415.706FC Datamining and Machine
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Summary
Decision Tree Learning
Decision Tree Learning
Decision Tree
Learned Rules
When to use Decision Tree Learning
ID3 Algorithm
What Attribute is the Best Classifier?
Information Gain
Information Gain Example
Decision Tree Example
Partially Grown Tree
Final Tree
Searching in Decision Trees
ID3 Hypothesis Space
Inductive Bias in Decision Tree Learning
Restriction Biases and Preference Biases
Occam's razor
Avoiding Overfitting
Overfitting in Decision Trees
Approaches to Overfitting
Reduced Error Pruning
Impact of Reduced Error Pruning
Rule Post Pruning
Improved Estimated Accuracy
Why convert to rules?
Continuous Valued Attributes?
Example
Other Measures for Picking Attributes
Problems with Gain Ratio
Missing Attribute Values in Train. Ex.
Attributes with Differing Costs
Summary
Summary continued
Patricia Riddle
Fri May 15 13:00:36 NZST 1998