To paraphrase Kornai's best idea (which he's importing from outside the field):
A reasonable guideline is limiting the human caused xrisk to several orders of magnitude below the natural background xrisk level, so that human-caused dangers are lost in the noise compared to the pre-existing threat we must live with anyway.
I like this idea (as opposed to foolish proposals like driving risks from human made tech down to zero), but I expect someone here could sharpen the xrisk level that Kornai suggests. Here's a disturbing note from the appendix where he does his calculation:
Here we take the “big five” extinction events that occurred within the past half billion years as background. Assuming a mean time of 10^8 years between mass extinctions and 10^9 victims in the next one yields an annualized death rate of 10, comparing quite favorably to the reported global death rate of ~500 for contact with hornets, wasps, and bees (ICD-9-CM E905.3). [emphasis added]
Obviously, this is a gross mis-understanding of xrisks and why they matter. No one values human lives linearly straight down to 0 or assumes no expansion factors for future generations.
A motivated internet researcher could probably just look up the proper citations from Bostrom's "Global Catastrophic Risks" and create a decomposed model that estimated the background xrisk level from only nature (and then only nature + human risks w/o AI), and develop a better safety margin that would be lower than the one in this paper (implying that AGI could afford to be a few orders of magnitude riskier than Kornai's rough estimates).
A reasonable guideline is limiting the human caused xrisk to several orders of magnitude below the natural background xrisk level, so that human-caused dangers are lost in the noise compared to the pre-existing threat we must live with anyway.
I like this idea [...]
We are well above there right now - and that's very unlikely to change before we have machine superintelligence.
For those of you interested, András Kornai's paper "Bounding the impact of AGI" from this year's AGI-Impacts conference at Oxford had a few interesting ideas (which I've excerpted below).
Summary: