This is a linkpost for https://confusopoly.com/2019/04/03/the-optimizers-curse-wrong-way-reductions/.
Summary
I spent about two and a half years as a research analyst at GiveWell. For most of my time there, I was the point person on GiveWell’s main cost-effectiveness analyses. I’ve come to believe there are serious, underappreciated issues with the methods the effective altruism (EA) community at large uses to prioritize causes and programs. While effective altruists approach prioritization in a number of different ways, most approaches involve (a) roughly estimating the possible impacts funding opportunities could have and (b) assessing the probability that possible impacts will be realized if an opportunity is funded.
I discuss the phenomenon of the optimizer’s curse: when assessments of activities’ impacts are uncertain, engaging in the activities that look most promising will tend to have a smaller impact than anticipated. I argue that the optimizer’s curse should be extremely concerning when prioritizing among funding opportunities that involve substantial, poorly understood uncertainty. I further argue that proposed Bayesian approaches to avoiding the optimizer’s curse are often unrealistic. I maintain that it is a mistake to try and understand all uncertainty in terms of precise probability estimates.
I go into a lot more detail in the full post.
"Footing" here is about the robustness of our credences, so I'm not sure that we can really be ignorant of them. Yes different projects in a poorly understood domain will have different levels of poorly understood uncertainty, but it's not clear that this is more important than the different levels of uncertainty in better-understood domains (e.g. comparisons across Givewell charities).
What do you mean by reliable?
Yes, but it's very hard to attack any particular prior as well.
Yes I know but again it's the ordering that matters. And we can correct for optimizer's curse, and we don't know if these corrections will overcorrect or undercorrect.
"The problem" should be precisely defined. Identifying the correct intervention is hard because the optimizer's curse complicates comparisons between better- and worse-substantiated projects? Yes we acknowledge that. And you are not just saying that there's a problem, you are saying that there is a problem with a particular methodology, Bayesian probability. That is very unclear.
This is just a generic bucket of "stuff that makes estimates more accurate, sometimes" without any more connection to the optimizer's curse than to any other facets of uncertainty.
Let's imagine I make a new group whose job is to randomly select projects and then estimate each project's expected utility as accurately and precisely as possible. In this case the optimizer's curse will not apply to me. But I'll still want to evaluate things with multiple models, learn more and use proxies such as social capacity.
What is some advice that my group should not follow, that Givewell or Open Philanthropy should follow? Aside from the existing advice for how to make adjustments for the Optimizer's Curse.
If you want, you can define some set of future updates (e.g. researching something for 1 week) and specify a probability distribution for your belief state after that process. I don't think that level of explicit detail is typically necessary though. You can just give a rough idea of your confidence level alongside likelihood estimates.