Eliezer Yudkowsky wrote this article a while ago, which basically states that all knowledge boils down to 2 premises: That "induction works" has a sufficiently large prior probability, and that there exists some single large ordinal that is well-ordered.
Notes :
Good Experiments
The point of "Priors are useless" is that if you update after enough experiments, you tend to the truth distribution regardless of your initial prior distribution (assuming its codomain doesn't include 0 and 1, or at least that it doesn't assign 1 to a non-truth and 0 to a truth). However, "enough experiments" is magic :
Good Priors
However, conversely, having a good prior distribution is magic too. You can have a prior distribution affecting 1 to truths, and 0 to non-truths. So you might want the additional requirement that the prior distribution has to be computable. But there are two problems :
Epistemies
In real-life, we don't encounter these infinite regresses. We use epistemies. An epistemy is usually a set of axioms, and a methodology to derive truths with these axioms. They form a trusted core, that we can use if we understood the limits of the underlying meta-assumptions and methodology.
Epistemies are good, because instead of thinking about the infinite chain of higher priors every time we want to prove a simple statement, we can rely on an epistemy. But they are regularly not defined, not properly followed or not even understood. Leading to epistemic faults.
Questions
As such, I'm interested in the following :
I'm looking for ideas and pointers/links.
Even if your thought seems obvious, if I didn't explicitly mention it, it's worth commenting it. I'll add it to this post.
Even if you only have idea for one of the question, or a particular criticism of a point made in the post, go on.
Thank you for reading this far.