Difference between revisions of "2545: Bayes' Theorem"
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For example, if a test has a 100% sensibility (all affected are tested positive) and a 1% rate of false positive (1% of unaffected is nevertheless tested positive), the interpretation of a positive test depends on the prevalence (percentage of affected). In the example case, the prevalence is 0.1%, so that when the test result is positive (left column) chances are in fact that the subject is unaffected nine time out of ten. Although this would be a very performant test, given the prevalence, chances are that the test is a false positive. | For example, if a test has a 100% sensibility (all affected are tested positive) and a 1% rate of false positive (1% of unaffected is nevertheless tested positive), the interpretation of a positive test depends on the prevalence (percentage of affected). In the example case, the prevalence is 0.1%, so that when the test result is positive (left column) chances are in fact that the subject is unaffected nine time out of ten. Although this would be a very performant test, given the prevalence, chances are that the test is a false positive. | ||
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+ | Bypassing the graphical display, the bayesian formula would give : p( Affected | Positive ) = p( Positive | Affected )*p( Affected )/p( Positive ) = 100% * 0.1% / 1% = 10% - QED. | ||
In this comic, a teacher is presenting a problem which the students are supposed to use Bayes' theorem to solve. However, the off-panel student knows that they are studying Bayes' theorem, so they use that prior knowledge to guess the usual answer to such problems. The punch line is the caption - if you know Bayes' theorem well enough, you don't need to actually calculate the probabilities. | In this comic, a teacher is presenting a problem which the students are supposed to use Bayes' theorem to solve. However, the off-panel student knows that they are studying Bayes' theorem, so they use that prior knowledge to guess the usual answer to such problems. The punch line is the caption - if you know Bayes' theorem well enough, you don't need to actually calculate the probabilities. |
Revision as of 07:39, 23 November 2021
Bayes' Theorem |
Title text: P((B|A)|(A|B)) represents the probability that you'll mix up the order of the terms when using Bayesian notation. |
Explanation
This explanation may be incomplete or incorrect: Created by P(d/dx x^x | d/dx x^(1/x)) - Please change this comment when editing this page. Do NOT delete this tag too soon. If you can address this issue, please edit the page! Thanks. |
Tested positive | Tested negative | Total | |
Affected | 0.1% | 0.0% | 0.1% |
Unaffected | 0.9% | 99% | 99.9% |
Test result | 1% | 99% | 100% |
For example, if a test has a 100% sensibility (all affected are tested positive) and a 1% rate of false positive (1% of unaffected is nevertheless tested positive), the interpretation of a positive test depends on the prevalence (percentage of affected). In the example case, the prevalence is 0.1%, so that when the test result is positive (left column) chances are in fact that the subject is unaffected nine time out of ten. Although this would be a very performant test, given the prevalence, chances are that the test is a false positive.
Bypassing the graphical display, the bayesian formula would give : p( Affected | Positive ) = p( Positive | Affected )*p( Affected )/p( Positive ) = 100% * 0.1% / 1% = 10% - QED.
In this comic, a teacher is presenting a problem which the students are supposed to use Bayes' theorem to solve. However, the off-panel student knows that they are studying Bayes' theorem, so they use that prior knowledge to guess the usual answer to such problems. The punch line is the caption - if you know Bayes' theorem well enough, you don't need to actually calculate the probabilities.
The title text refers to the mathematical definition of Bayes' theorem: P(A | B) = P(B|A) * P(A) / P(B). Here, P(A|B) represents the probability of some event A occurring, given that B has occurred. This is often referred to as "the probability of A given B". It can be hard to remember if P(A|B) means probability of A given B, or if it's B given A, especially when talking about the probability of an earlier cause given a later effect. Randall's joke is based on this difficulty. Here P((B|A)|(A|B)) is the probability that you write (B|A) given that the correct expression is (A|B), which makes it the probability that you got the order of the notation mixed up.
Trivia
When this comic came out, the title text was only "P((B", the comic itself linked to A) or A) (depending on where the comic was viewed from), and the "Black Lives Matter" image in the header was replaced by "(A", but this was quickly corrected. (archive)
Transcript
This transcript is incomplete. Please help editing it! Thanks. |
- [Miss Lenhart using a pointer and pointing to a white-board with statistical formulae]
- Miss Lenhart: Given these prevalences, is it likely that the test result is a false positive?
- (off-panel voice): Well, this chapter is on Bayes' Theorem, so yes.
- [Caption below the panel]:
- Sometimes, if you understand Bayes' Theorem well enough, you don't need it.
Discussion
I don't know if the latest (nearly!) global change back to "affected" in the example was intentional or just a cut'n'paste of historical wordings whilst making other tweaks, but I'm not going to go through and change to "infected" a third time (first time, collided with an edit conflict, and so cancelled and worked again on that, albeit with at least one new typo). Yes, in general, being affected or not is correct, but with "affect/effect" confusion (for some) and elsewhere described as "afflicted with" and (still in at least one place) "infected" the example works as well or even better with infections rather than affectations. I was also tempted to change "performant" as not everyone will know exactly what it means, but was stuck for a good substitute ("efficacious" is close, but probably doesn't help a great deal). 172.70.90.211 09:50, 23 November 2021 (UTC)
- I would expect the <1-in-1000 sorts of numbers relevant to the comic to apply to genetic conditions and cancer, not to infections. We don't screen wide swathes of asymptomatic population for infections. Even now with all the testing for COVID-19, the positivity rate is above 1%. -- [[User:{{{1}}}|{{{1}}}]] ([[User talk:{{{1}}}|talk]]) (please sign your comments with ~~~~)
- I'd say "afflicted" throughout would be best, of the suggestions given. Avoid "sufferer/ing" (is benign, or they're a carrier only?) or similar. "Susceptible" might work if you bake that into a minor scenario rewrite.
- But "affected" is vague... Relatives are "affected" if they change their routine to care for an ill person, however negative they'd test.
- (I also instinctively avoid effect/affect because of the 'P((effect|affect)|(effect|affect))' affect/effect... ;) But not a good reason, just nice to hear it's not only me trying to dodge this in everyday writing!) 172.70.162.215 08:02, 24 November 2021 (UTC)
- This is why I proposed ӕffect as a compromise position - but mostly to annoy a friend who studies old english.162.158.91.50 13:00, 25 November 2021 (UTC)
- What was thér response? 172.70.85.227 10:26, 24 November 2021 (UTC)
- They seemed unrædy to hear it 162.158.91.50 13:00, 25 November 2021 (UTC)
- This is why I proposed ӕffect as a compromise position - but mostly to annoy a friend who studies old english.162.158.91.50 13:00, 25 November 2021 (UTC)
- How about "Has condition" and "Doesn't have condition"? It's not too linguistically confusing and aligns with normal parlance -- "I have a cold". The table isn't trying to avoid a multi-word solution, as the headers are two-word phrases. 172.69.68.158 23:46, 10 January 2022 (UTC)
This is the second comic to reference Bayes' Theorem: https://xkcd.com/1236/. Is that worth mentioning in the explanation? I'm a newbie!172.70.34.191 21:32, 23 November 2021 (UTC) Actually, I forgot this one too: https://xkcd.com/1132/ 172.70.34.191 21:35, 23 November 2021 (UTC)