Machine Learning: Foundations (2001/2)
Available Data Sets:
- 
Iris: DataInformation.
- 
australian: DataInformation
- 
heart: DataInformation
- 
diabetes: DataInformation
More datasets: UCI
Machine Learning database repositoryFinal Project:
assignment
branching program paper
Data
sets: Download Delve classification datasets
 
Homeworks:
homework 1
homework 2
homework 3
homework 4
 
 
Classes Schedule(Tentative):
- 
Introduction  (slides,scribe).
- 
Bayesian Inference (slides,
scribe)
- 
PAC model and Occam Razor (slides,
scribe)
- 
Boosting and Experts (slides,scribe)
- 
Decision Lists and Decision Trees (Splitting Criteria) (slides,scribe)
- 
VC dimension I  - definition and impossibility result (slides,scribe)
- 
VC dimension II - sample bound ( slides, scribe
)
- 
Artificial Neural Networks ( slides, scribe
)
- 
Model Selection (slides, scribe
)
- 
Decision tree  - Pruning  (slides, scribe
)
- 
Support Vector Machine: SVM  (slides, scribe
part I scribe part II )