7.2, due on November 20
The conditions for the universality of the uniform aren't obvious to me, because I don't see why it's necessary to have a continuous inverse to allow us to use F as our c.d.f.
It's cool to see how you can choose any distribution you want to sample from as long as it's always above the distribution you actually want to use, rejecting values that are above the actual distribution. I wonder if it makes sense to talk about using distributions along the y-axis that aren't uniform. I suppose that would mess up the intuition of the probability equaling the area under the distribution, which might render the sampling incorrect.
In Example 7.2.9 I didn't quite see how to choose f_R(x) like the writers did. Is there a formula for coming up with that distribution that was chosen in this example?
It's cool to see how you can choose any distribution you want to sample from as long as it's always above the distribution you actually want to use, rejecting values that are above the actual distribution. I wonder if it makes sense to talk about using distributions along the y-axis that aren't uniform. I suppose that would mess up the intuition of the probability equaling the area under the distribution, which might render the sampling incorrect.
In Example 7.2.9 I didn't quite see how to choose f_R(x) like the writers did. Is there a formula for coming up with that distribution that was chosen in this example?
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