Learning Sets of Rules
This talk is based on
Tom M. Mitchell.
Machine Learning.
McGraw Hill. 1997. Chapter 10.
and his
slides
.
1
Learning Rules
2
Rules
3
Sequential Covering
3.1
Learn-One-Rule
3.1.1
Learn-One-Rule Algorithm
3.1.2
Learn-One-Rule Example
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3.1.3
Learn One Summary
3.2
CN2
3.3
Other Variations
3.4
Other Performance Measures
4
Learning Rule Sets Summary
5
Learning Rule Sets Summary
6
Learning First-Order Rules
6.1
First-Order Logic Definitions
6.2
Learning First-Order Horn Clauses
6.3
FOIL
6.4
Generating Candidate Specializations
6.5
FOIL Example
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6.6
Guiding Search in FOIL
6.7
Foil-Gain
6.8
Learning Recursive Rule Sets
6.9
FOIL Summary
7
Induction As Inverted Deduction
7.1
Inverted Example
7.2
Induction and Deduction
7.3
Inverse Entailment
7.4
Inverse Entailment Pros and Cons
7.5
Resolution Rule
7.6
Inverting Resolution
7.7
Learning With Inverted Resolution
7.8
First-Order Resolution
7.9
Inverting First-Order Resolution
7.10
Inverted First-Order Example
7.11
Inverse Resolution Summary
8
Generalization, θ-Subsumption, and Entailment
9
PROGOL
Entire Presentation with Notes
Copyright © 2009
José M. Vidal
.
All rights reserved.
08 April 2003, 01:53PM