What have we done?
We've basically looked at uncertainty,
uncertainty of the world, uncertainty of our sensors,
uncertainty about our actions.
And we model the uncertainty by a mechanism called
probabilities.
Actually, not only prior probabilities,
but also conditional probabilities.
Why?
Because our agent learns things as it goes along.
So it has more and more evidence that adjusts
the probabilities further on.
So some initial priors we need to assess.
And some of them we can derive, for instance,
by Bayes' rule or the product rule or other things.
So if we have multiple evidence, then we usually
want to find the probability of the product
and we usually want to exploit conditional independence
because we don't really have a lot of full independence
in our world anyway.
OK.
And so the things we've done in a pedestrian way here,
we're going to do with Bayesian networks next.
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00:01:46 Min
Aufnahmedatum
2021-01-28
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2021-02-11 16:07:20
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Summary of this chapter.