and kind of entered the math of Bayesian networks.
And so you should think of Bayesian networks
being a couple of things at the same time.
It's an inference procedure, something
that allows us to program with probabilities
and computing these probability distributions given
some evidence.
It's a very well engineered substitute
for working with the full joint probability distribution, which
is unwieldy and gets too big.
And it's also a graphical tool where you can just basically
look at the model of the world and see
whether it makes sense.
So we extensively looked at this example, which is up here.
We have a Bayesian network.
So you remember we have some causes.
We have an alarm that can go off.
If there's a burglary, that's what it's for.
And there's an earthquake, that's what it's not for.
And we have this remote supervision system
of the neighbors, which call if they hear the alarm.
And now the question is, John or Mary call you at work.
And now the question is, do you call the police or not?
OK.
And we have this very simple Bayesian network
that has the intuition that burglary and earthquake
caused the alarm, and the alarm causes the calls.
And we have certain probabilities
involved with this.
In the simplest case, on the roots,
we have the prior probabilities.
On the single inflow nodes, we have a very,
we have a very simple probability transformation.
If the alarm is true, then John calls with 90%.
And if it's false, he still calls with 0.5%.
And here we have this kind of conditional probability table
that tells me the probabilities of whatever the four
possibilities of what burglary and earthquake may be.
It's a very succinct and simple representation of the world.
And it tells me we have this conditional independence
situation here that we want to exploit.
And if we wish to Lydia Tommie below.
We can take a look at otherwise set of higher probability
table.
We weren't going to face a quake for a month.
We had to live in the widowhood,
where nefarious interior droughts
only Marketing onion crop they don't
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00:03:12 Min
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2021-03-30
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2021-03-31 10:38:01
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Recap: What is a Bayesian Network?
Main video on the topic in chapter 4 clip 2.