Technically the connection between the computability levels of AIT (estimability, lower/upper semi-computability, approximability) and the Turing degrees has not been worked out properly. See chapter 6 of Leike’s thesis, though there is a small error in the inequalities of section 6.1.2. It is necessary to connect the computability of real valued functions (type two theory of effectivity) to the arithmetic hierarchy—as far as I know this hasn’t been done, but maybe I’ll share some notes in a few months.
Roughly, most classes don’t have a universal distribution because they are not computably enumerable, but perhaps there are various reasons. There’s a nice table in Marcus Hutter’s original book, page 50.
It says that (negative log) universal probability is about the same as the (monotone) Kolmogorov complexity—in the discrete case up to a constant multiple. Basically, the Bayesian prediction is closely connected to the shortest explanation. See Li and Vitanyi’s “An Introduction to Kolmogorov Complexity and its Applications.”
Last question is a longer story I guess. Basically, the conditionals of the universal distribution are not lower semi-computable, and it gets even worse when you have to compare the expected values of different outcomes because of tie-breaking. But a good approximation of AIXI can still be computed in the limit.
Technically the connection between the computability levels of AIT (estimability, lower/upper semi-computability, approximability) and the Turing degrees has not been worked out properly. See chapter 6 of Leike’s thesis, though there is a small error in the inequalities of section 6.1.2. It is necessary to connect the computability of real valued functions (type two theory of effectivity) to the arithmetic hierarchy—as far as I know this hasn’t been done, but maybe I’ll share some notes in a few months.
Roughly, most classes don’t have a universal distribution because they are not computably enumerable, but perhaps there are various reasons. There’s a nice table in Marcus Hutter’s original book, page 50.
It says that (negative log) universal probability is about the same as the (monotone) Kolmogorov complexity—in the discrete case up to a constant multiple. Basically, the Bayesian prediction is closely connected to the shortest explanation. See Li and Vitanyi’s “An Introduction to Kolmogorov Complexity and its Applications.”
Last question is a longer story I guess. Basically, the conditionals of the universal distribution are not lower semi-computable, and it gets even worse when you have to compare the expected values of different outcomes because of tie-breaking. But a good approximation of AIXI can still be computed in the limit.