Anthropic Effects in Estimating Evolution Difficulty

post by Mark Xu (mark-xu) · 2021-07-05T04:02:18.242Z · LW · GW · 2 comments

Thanks to Linchuan Zhang, Jack Ryan and Carl Shulman for helpful comments and suggestions. Remaining mistakes are my own.

Epistemic status: “There is something fascinating about [anthropics]. One gets such wholesale returns of conjecture out of such a trifling investment of fact.” (Mark Twain, Life on the Mississippi)

Attempts to predict the development of artificial general intelligence (AGI) sometimes use biological evolution to upper bound the amount of computation needed to produce human level intelligence, e.g. in Ajeya’s use of biological anchors [LW · GW]. Such attempts have mostly ignored observation selection effects. Shulman and Bostrom’s 2012 paper How Hard is Artificial Intelligence? analyzes how evolutionary arguments interact with various ways of reasoning about observation selection effects, drawing evidence from timings of evolutionary milestones and instances of convergent evolution. This post is a summary of key arguments advanced by the paper; see the original paper for citations.

More concretely, suppose evolutionary processes produce human-level intelligence on 1/10 or 1/10^1000 planets that develop life. Call the former case “easy” and the latter case “hard.” The paper attempts to determine whether the facts about evolution on Earth can distinguish between evolving intelligence being easy or hard.

Recall two common forms of anthropic reasoning:[1]

For more discussion, see Katja's Anthropic Principles or Bostrom’s Anthropic Bias.

Key takeaways:


  1. Armstrong roughly argues that SSA corresponds to making decisions under average utilitarianism while SIA corresponds to making decisions under total utilitarianism. ↩︎

2 comments

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comment by Yoreth · 2021-07-06T04:00:03.495Z · LW(p) · GW(p)

Consider the following charts:

Chart 1

Chart 2

Chart 1 shows the encephalization quotient (EQ) of various lineages over time, while Chart 2 shows the maximum EQ of all known fossils from any given time. (Source 1, Source 2. Admittedly this research is pretty old, so if anyone knows of more recent data, that'd be good to know.)

Both of these charts show a surprising fact: that the intelligence of life on Earth stagnated (or even decreased) throughout the entire Mesozoic Era, and did not start increasing until immediately after the K/T event. From this it appears that life had gotten stuck in a local equilibrium that did not favor intelligence; i.e. the existence of dinosaurs (or other Mesozoic species) made it impossible for any more intelligent creatures to emerge. Thus the K/T event was a Great Filter: we needed a shock severe enough to dislodge this equilibrium, but not so severe as to wipe out all the lineages from which intelligence could evolve.

If this is true, then the existence of ravens and elephants today is not much evidence that evolving intelligence is easy, because they exist for the same reason that humans do.

None of this considers octopuses. It would be interesting to see if their brain size history follows similar curves as for the vertebrates illustrated above (but since they're made up of soft tissue we may never know). If so, then that would confirm the view that evolving intelligence is difficult. On the other hand, it's hard to imagine that the marine ecosystem would've been affected by the K/T event in the same way that the terrestrial was. Or maybe octopuses are themselves what is suppressing the evolution of greater intelligence among marine invertebrates.

comment by Charlie Steiner · 2021-07-05T11:04:00.958Z · LW(p) · GW(p)

I'm going to have some criticism here, but don't take it too hard :) Most of this is directed at our state of understanding in 2012.

I think a way to do better is not to mention SSA or SIA at all, and just talk about conditioning on information. Don't even have to say "anthropic conditioning" or anything special - we're just conditioning on the fact that sampling from some distribution (e.g. "worlds with intelligent life who figure out evolution") gave us exactly our planet. (My own arguments for this on LW date from c. 2015, but this was a common position in cosmology before that.)

This gives you information that is more "anthropic" than SSA, but more specific than SIA. We can now ask probabilistic questions entirely in the language of conditional probabilities, which tells you more about what empirical questions are important. E.g. "What us the probability that octopus-level intelligence evolves on an earth-like planet in the milky way, conditional on some starting distribution over models of evolution, and further conditional on a sampling process from planets with human-level intelligence returning Earth?" The task is simply to update the models of evolution by reweighting according to how well they predict that sampling from our reference class give us.

Also, assuming all distributions are uniform gives one an unrealistic picture of timing there at the end. Think about what happens if the distributions are Poisson!

Footnote: Armstrong argues something more niche than that, because he's not talking about a "normal" CDT agent doing averaging/totalling, he's talking about an ADT agent doing averaging/totalling, and these are very different baseline agents!