It means that if you are in one, probability does not come down to only preferences. I suppose that since you can never be absolutely sure you're in one, you still have to find out your weightings between worlds where there might be nothing but preferences.
The other point is that I seriously doubt there's anything built into you that makes you not care about possible worlds where QM is true, so even if it does come down to 'mere preferences', you can still make mistakes.
The existence of an objective weighting scheme within one set of possible worlds gives me some hope of an objective weighting between all possible worlds, but note all that much, and it's not clear to me what that would be. Maybe the set of all possible worlds is countable, and each world is weighted equally?
Maybe the set of all possible worlds is countable, and each world is weighted equally?
I am not really sure what to make of weightings on possible worlds. Overall, on this issue, I think I am going to have to admit that I am thoroughly confused.
By the way, do you mean "finite" here, rather than countable?
In Probability Space & Aumann Agreement, I wrote that probabilities can be thought of as weights that we assign to possible world-histories. But what are these weights supposed to mean? Here I’ll give a few interpretations that I've considered and held at one point or another, and their problems. (Note that in the previous post, I implicitly used the first interpretation in the following list, since that seems to be the mainstream view.)
As you can see, I think the main problem with all of these interpretations is arbitrariness. The unconditioned probability mass function is supposed to represent my beliefs before I have observed anything in the world, so it must represent a state of total ignorance. But there seems to be no way to specify such a function without introducing some information, which anyone could infer by looking at the function.
For example, suppose we use a universal distribution, where we believe that the world-history is the output of a universal Turing machine given a uniformly random input tape. But then the distribution contains the information of which UTM we used. Where did that information come from?
One could argue that we do have some information even before we observe anything, because we're products of evolution, which would have built some useful information into our genes. But to the extent that we can trust the prior specified by our genes, it must be that evolution approximates a Bayesian updating process, and our prior distribution approximates the posterior distribution of such a process. The "prior of evolution" still has to represent a state of total ignorance.
These considerations lead me to lean toward the last interpretation, which is the most tolerant of arbitrariness. This interpretation also fits well with the idea that expected utility maximization with Bayesian updating is just an approximation of UDT that works in most situations. I and others have already motivated UDT by considering situations where Bayesian updating doesn't work, but it seems to me that even if we set those aside, there is still reason to consider a UDT-like interpretation of probability where the weights on possible worlds represent how much we care about those worlds.