Open problems are clearly defined problems1 that have not been solved. In older fields, such as Mathematics, the list is rather intimidating. Rationality, on the other, seems to have no list.
While we have all of us here together to crunch on problems, let's shoot higher than trying to think of solutions and then finding problems that match the solution. What things are unsolved questions? Is it reasonable to assume those questions have concrete, absolute answers?
The catch is that these problems cannot be inherently fuzzy problems. "How do I become less wrong?" is not a problem that can be clearly defined. As such, it does not have a concrete, absolute answer. Does Rationality have a set of problems that can be clearly defined? If not, how do we work toward getting our problems clearly defined?
See also: Open problems at LW:Wiki
1: "Clearly defined" essentially means a formal, unambiguous definition. "Solving" such a problem would constitute a formal proof.
Well, I'm pretty sure that the smart money is all on one side of the question because of certain heuristic evidence that becomes very clear when you've worked with these complexity classes for a long while.
It's the same reason the smart money was on Fermat's Last Theorem being true (prior to the proof being found); not only would it have been very unusual in mathematics for this simple Diophantine equation to have its first nontrivial solution only when the numbers became absurdly large, but it is equivalent to a beautiful conjecture in elliptic curves which seemed to admit of no counterexamples.
There's plenty of inductive evidence found and used in the actual doing of mathematics; it just doesn't make the textbooks (since you generally don't publish on a subject unless you've found a proof, at which point the inductive evidence is utterly redundant). Yet it guides the intuition of all mathematicians when they decide what to try proving next.
Compare Einstein's Arrogance.
Suppose you test Fermat's Last Theorem for n up to 10^10, and don't find a counterexample. How much evidence does that give you for FLT being true? In other words, how do you compute P(a counterexample exists with n<=10^10 | FLT is false), since that's what's needed to do a Bayesian update with this inductive evidence? (Assume this is before the proof was found.)
I don't dispute that mathematicians do seem to reason in ways that are similar to using probabilities, but I'd like to know where these "probabilities" are coming from and whether the ... (read more)