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Machine Learning
1.
Machine Learning Approach
based on Decision Trees
2.
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Training Examples Shall
we play tennis today? ( Tennis 1 ) Attribute, variable, property Object, sample, example decision
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Entropy Largest entropy
Boolean functions with the same number of ones and zeros have largest entropy
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Training Examples Examples,
minterms, cases, objects, test cases,
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A Training Set
38.
A decision Tree
from Introspection
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ID3 Induced
Decision Tree
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Splitting Examples
by Testing Attributes
43.
Another example :
Tennis 2 (simplified former example)
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Choosing the first
split
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Resulting Decision Tree
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Restaurant Example Learning
Curve
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