Yes, that's a valid reason to discount problems like ASP. It's awful how much we don't know...
It's awful how much we don't know...
Well, yes, but... is there a feeling at SI that these kinds of problems are relevant to AGI, friendly or no? Or is this just something generally interesting (maybe with the hope that these problems may point to something tangential to them, but which would turn out to be highly relevant)?
I mean, generally I would say that ideas connected to these approaches fall into the "symbolic AI" paradigm, which is supposed to be discredited by some seriously revered people, like Hofstadter...
Some people on LW have expressed interest in what's happening on the decision-theory-workshop mailing list. Here's an example of the kind of work we're trying to do there.
In April 2010 Gary Drescher proposed the "Agent simulates predictor" problem, or ASP, that shows how agents with lots of computational power sometimes fare worse than agents with limited resources. I'm posting it here with his permission:
About a month ago I came up with a way to formalize the problem, along the lines of my other formalizations:
Also Wei Dai has a tentative new decision theory that solves the problem, but this margin (and my brain) is too small to contain it :-)
Can LW generate the kind of insights needed to make progress on problems like ASP? Or should we keep working as a small clique?