Hmm... I would have pegged your main argument as being more related to overpopulation than blind spots specifically. Although.... I admit I skimmed a little. X_X
At least I managed to pick up that it was a critical part of the article!
Now that I think about it... I'm not actually worried about overpopulation/resource collapse, but I am worried about LessWrong being willfully ignorant without intending to be so. I guess I really dropped the ball here in terms of ... Wait, something about the article made me skim and I didn't catch it on the first pass. This is intriguing. It's been a long time since I've had this many introspective realizations in one thought train. I have to wonder how many others skimmed as well, what our collective reason to do so was, and what is the best route to solve this problem.
...Or else you just misspoke and resource collapse is actually your main concern/argument.
But even in that case, I skimmed, and I can see skimming being a problem. Yay for orthogonal properties!
All this from the mere statement of accuracy. ...Did trying to avoid inferential silence play any role in your making this comment?
Now that I think about it... I'm not actually worried about overpopulation/resource collapse, but I am worried about LessWrong being willfully ignorant without intending to be so.
I think the chances of a significant portion of LessWrong not having thought about the issue is low. Population growth is a well understand issue compared to existiential risks like grey goo.
bokov makes a series of arguments that most people probably have heard before and many consider to be refuted and then suggests that because people don't agree with him, they have a blindspot.
In an unrelated thread, one thing led to another and we got onto the subject of overpopulation and carrying capacity. I think this topic needs a post of its own.
TLDR mathy version:
let f(m,t) be the population that can be supported using the fraction of Earth's theoretical resource limit m we can exploit at technology level t
let t = k(x) be the technology level at year x
let p(x) be population at year x
What conditions must constant m and functions f(m,k(x)), k(x), and p(x) satisfy in order to insure that p(x) - f(m,t) > 0 for all x > today()? What empirical data are relevant to estimating the probability that these conditions are all satisfied?
Long version:
Here I would like to explore the evidence for and against the possibility that the following assertions are true:
Please note: I'm not proposing that the above assertions must be true, only that they have a high enough probability of being correct that they should be taken as seriously as, for example, grey goo:
Predictions about the dangers of nanotech made in the 1980's shown no signs of coming true. Yet, there is no known logical or physical reason why they can't come true, so we don't ignore it. We calibrate how much effort should be put into mitigating the risks of nanotechnology by asking what observations should make us update the likelihood we assign to a grey-goo scenario. We approach mitigation strategies from an engineering mindset rather than a political one.
Shouldn't we hold ourselves to the same standard when discussing population growth and overshoot? Substitute in some other existential risks you take seriously. Which of them have an expectation2 of occuring before a Malthusian Crunch? Which of them have an expectation of occuring after?
Footnotes:
1: By carrying capacity, I mean finite resources such as easily extractable ores, water, air, EM spectrum, and land area. Certain very slowly replenishing resources such as fossil fuels and biodiversity also behave like finite resources on a human timescale. I also include non-finite resources that expand or replenish at a finite rate such as useful plants and animals, potable water, arable land, and breathable air. Technology expands carrying capacity by allowing us to exploit all resource more efficiently (paperless offices, telecommuting, fuel efficiency), open up reserves that were previously not economically feasible to exploit (shale oil, methane clathrates, high-rise buildings, seasteading), and accelerate the renewal of non-finite resources (agriculture, land reclamation projects, toxic waste remediation, desalinization plants).
2: This is a hard question. I'm not asking which catastrophe is the mostly likely to happen ever while holding everything else constant (the possible ones will be tied for 1 and the impossible ones will be tied for 0). I'm asking you to mentally (or physically) draw a set of survival curves, one for each catastrophe, with the x-axis representing time and the y-axis representing fraction of Everett branches where that catastrophe has not yet occured. Now, which curves are the upper bound on the curve representing Malthusian Crunch, and which curves are the lower bound? This is how, in my opinioon (as an aging researcher and biostatistician for whatever that's worth) you think about hazard functions, including those for existential hazards. Keep in mind that some hazard functions change over time because they are conditioned on other events or because they are cyclic in nature. This means that the thing most likely to wipe us out in the next 50 years is not necessarily the same as the thing most likely to wipe us out in the 50 years after that. I don't have a formal answer for how to transform that into optimal allocation of resources between mitigation efforts but that would be the next step.