Josh Starmer says it in here.
I have been searching for a simple way to understand likelihood and it's Bayesian and Frequentist use.
Josh's way seems simple to me.
Is he correct?
Josh Starmer says it in here.
I have been searching for a simple way to understand likelihood and it's Bayesian and Frequentist use.
Josh's way seems simple to me.
Is he correct?
WHERE STARMER IS CORRECT
When you limit consideration to continuous distributions (perhaps absolutely continuous), then the claim is correct: the likelihood value relates to the y-axis value of the PDF. Note that, contrasting colloquial use, “likelihood” and “probability” differ in meaning as technical terms in statistics, as these continuous distributions have the probability of any one point equal to zero, while the y-axis values have no upper bound on how high they can go.
WHERE STARMER IS WRONG
Likelihood is a general enough idea that it is inadequate to limit consideration to the continuous case. In the discrete case, for instance, think about how high the “PDF” goes on the y-axis. There is a sense in which it goes up to infinity! Thus, the idea of considering likelihood to be the y-axis value breaks down.
It might be worth thinking about what a “PDF” would look like for a distribution that has half of the density uniform on $[0,1]$ and the other half on exactly $1/2$. It’s easy to visualize the first half as just being a straight line $y=1$ on $[0,1]$ and zero everywhere else, but how high does the “PDF” go at exactly $1/2?$