BEWARE this concept : there are various accounts of what are the "three pillars of machine learning", and so far I haven't seen one which is properly MECE, though there are some decent ones.
One account which says that the three pillars are
- 1. supervised learning
- 2. unsupervised learning
- 3. reinforcement learning
... and the MECE structure is not always laid out clearly.
The space which these actually refer to :
- Axis 1 : training inputs are pre-determined, vs. undetermined
- Axis 2 : training goals are concrete, vs abstract
... and what they actually refer to :
1. supervised learning :
- - pre-determined inputs
- - goals are concrete
2. unsupervised learning :
- - pre-determined inputs
- - goals are abstract "just put things that look the same, together, and give me a report"
3. reinforcement learning :
- - both pre-determined ( closed world ) and undetermined ( open world ) inputs
- - goals are concrete "you get points based on specific criteria"
Roughly corresponding to the Johari window :
- supervised learning : figure out for me
[ what I know,
[ that I know ] ] - unsupervised learning : figure out for me
[ what I don't know,
[ that I know ] and [ that I don't know ] ] - reinforcement learning : figure out for me
[ what I know,
[ that I don't know ] ]
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