SLIDE 1
Computational Learning Theory
- For which tasks is successful learning possible?
- Under what conditions is successful learning guaranteed?
- What is successful learning?
- Probably approximately correct (PAC) framework
– Bounds on number of training examples needed
- Mistake bound framework
– Bounds on training errors for intermediate hypotheses
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