For the sake of argument, I'll grant that correctly formulated anthropic priors can reduce the bias in posterior estimates for the possibility of ET contact/confrontation: but the simple consequence of the math is that the influence of an anthropic prior decreases as the AGI gains more scientific knowledge. An AGI which has an (1-epsilon)-complete understanding of science, yet does not employ anthropic reasoning will have asymptotically equivalent estimates to an AGI which has an (1-epsilon)-complete understanding of science and employs correct anthropic reasoning.
How does a complete understanding of physics allow you to asymptotically approach "correct" solutions to anthropic problems? We can already imagine reformulating these problems in toy universes with completely known physics (like cellular automata), but that doesn't seem to help us solve them...
I am posting this is because I'm interested in self-modifying agent decision theory but I'm too lazy to read up on existing posts. I want to see a concise justification as to why a sophisticated decision theory would be needed for the implementation of an AGI. So I'll present a 'naive' decision theory, and I want to know why it is unsatisfactory.
The one condition in the naive decision theory is that the decision-maker is the only agent in the universe who is capable of self-modification. This will probably suffice for production of the first Artificial General Intelligence (since humans aren't actually all that good at self-modification.)
Suppose that our AGI has a probability model for predicting the 'state of the universe in time T (e.g. T= 10 billion years)' conditional on what it knows, and conditional on one decision it has to make. This one decision is how should it rewrite its code at time zero. We suppose it can rewrite its code instantly, and the code is limited to X bytes. So the AGI has to maximize utility at time T over all programs with X bytes. Supposing it can simulate its utility at the 'end state of the universe' conditional on which program it chooses, why can't it just choose the program with the highest utility? Implicit in our set-up is that the program it chooses may (and very likely) will have the capacity to self-modify again, but we're assuming that our AGI's probability model accounts for when and how it is likely to self-modify. Difficulties with infinite recursion loops should be avoidable if our AGI backtracks from the end of time.
Of course our AGI will need a probability model for predicting what a program for its behavior will do without having to simulate or even completely specify the program. To me, that seems like the hard part. If this is possible, I don't see why it's necessary to develop a specific theory for dealing with convoluted Newcomb-like problems, since the above seems to take care of those issues automatically.