Why do some societies exhibit more antisocial punishment than others? Martin explores both some literature on the subject, and his own experience living in a country where "punishment of cooperators" was fairly common.

I wish there were more discussion posts on LessWrong. Right now it feels like it weakly if not moderately violates some sort of cultural norm to publish a discussion post (similar but to a lesser extent on the Shortform). Something low effort of the form "X is a topic I'd like to discuss. A, B and C are a few initial thoughts I have about it. Thoughts?" It seems to me like something we should encourage though. Here's how I'm thinking about it. Such "discussion posts" currently happen informally in social circles. Maybe you'll text a friend. Maybe you'll bring it up at a meetup. Maybe you'll post about it in a private Slack group. But if it's appropriate in those contexts, why shouldn't it be appropriate on LessWrong? Why not benefit from having it be visible to more people? The more eyes you get on it, the better the chance someone has something helpful, insightful, or just generally useful to contribute. The big downside I see is that it would screw up the post feed. Like when you go to lesswrong.com and see the list of posts, you don't want that list to have a bunch of low quality discussion posts you're not interested in. You don't want to spend time and energy sifting through the noise to find the signal. But this is easily solved with filters. Authors could mark/categorize/tag their posts as being a low-effort discussion post, and people who don't want to see such posts in their feed can apply a filter to filter these discussion posts out. Context: I was listening to the Bayesian Conspiracy podcast's episode on LessOnline. Hearing them talk about the sorts of discussions they envision happening there made me think about why that sort of thing doesn't happen more on LessWrong. Like, whatever you'd say to the group of people you're hanging out with at LessOnline, why not publish a quick discussion post about it on LessWrong?
William_S2dΩ581257
22
I worked at OpenAI for three years, from 2021-2024 on the Alignment team, which eventually became the Superalignment team. I worked on scalable oversight, part of the team developing critiques as a technique for using language models to spot mistakes in other language models. I then worked to refine an idea from Nick Cammarata into a method for using language model to generate explanations for features in language models. I was then promoted to managing a team of 4 people which worked on trying to understand language model features in context, leading to the release of an open source "transformer debugger" tool. I resigned from OpenAI on February 15, 2024.
habryka1d4216
4
Does anyone have any takes on the two Boeing whistleblowers who died under somewhat suspicious circumstances? I haven't followed this in detail, and my guess is it is basically just random chance, but it sure would be a huge deal if a publicly traded company now was performing assassinations of U.S. citizens.  Curious whether anyone has looked into this, or has thought much about baseline risk of assassinations or other forms of violence from economic actors.
Dalcy2d356
1
Thoughtdump on why I'm interested in computational mechanics: * one concrete application to natural abstractions from here: tl;dr, belief structures generally seem to be fractal shaped. one major part of natural abstractions is trying to find the correspondence between structures in the environment and concepts used by the mind. so if we can do the inverse of what adam and paul did, i.e. 'discover' fractal structures from activations and figure out what stochastic process they might correspond to in the environment, that would be cool * ... but i was initially interested in reading compmech stuff not with a particular alignment relevant thread in mind but rather because it seemed broadly similar in directions to natural abstractions. * re: how my focus would differ from my impression of current compmech work done in academia: academia seems faaaaaar less focused on actually trying out epsilon reconstruction in real world noisy data. CSSR is an example of a reconstruction algorithm. apparently people did compmech stuff on real-world data, don't know how good, but effort-wise far too less invested compared to theory work * would be interested in these reconstruction algorithms, eg what are the bottlenecks to scaling them up, etc. * tangent: epsilon transducers seem cool. if the reconstruction algorithm is good, a prototypical example i'm thinking of is something like: pick some input-output region within a model, and literally try to discover the hmm model reconstructing it? of course it's gonna be unwieldly large. but, to shift the thread in the direction of bright-eyed theorizing ... * the foundational Calculi of Emergence paper talked about the possibility of hierarchical epsilon machines, where you do epsilon machines on top of epsilon machines and for simple examples where you can analytically do this, you get wild things like coming up with more and more compact representations of stochastic processes (eg data stream -> tree -> markov model -> stack automata -> ... ?) * this ... sounds like natural abstractions in its wildest dreams? literally point at some raw datastream and automatically build hierarchical abstractions that get more compact as you go up * haha but alas, (almost) no development afaik since the original paper. seems cool * and also more tangentially, compmech seemed to have a lot to talk about providing interesting semantics to various information measures aka True Names, so another angle i was interested in was to learn about them. * eg crutchfield talks a lot about developing a right notion of information flow - obvious usefulness in eg formalizing boundaries? * many other information measures from compmech with suggestive semantics—cryptic order? gauge information? synchronization order? check ruro1 and ruro2 for more.
Buck2dΩ31479
6
[epistemic status: I think I’m mostly right about the main thrust here, but probably some of the specific arguments below are wrong. In the following, I'm much more stating conclusions than providing full arguments. This claim isn’t particularly original to me.] I’m interested in the following subset of risk from AI: * Early: That comes from AIs that are just powerful enough to be extremely useful and dangerous-by-default (i.e. these AIs aren’t wildly superhuman). * Scheming: Risk associated with loss of control to AIs that arises from AIs scheming * So e.g. I exclude state actors stealing weights in ways that aren’t enabled by the AIs scheming, and I also exclude non-scheming failure modes. IMO, state actors stealing weights is a serious threat, but non-scheming failure modes aren’t (at this level of capability and dignity). * Medium dignity: that is, developers of these AIs are putting a reasonable amount of effort into preventing catastrophic outcomes from their AIs (perhaps they’re spending the equivalent of 10% of their budget on cost-effective measures to prevent catastrophes). * Nearcasted: no substantial fundamental progress on AI safety techniques, no substantial changes in how AI works. This subset of risk is interesting because I think it’s a natural scenario at which to target technical work on AI safety. (E.g. it’s the main scenario we’re targeting with our AI control agenda.) I claim that the majority of this risk comes from the lab using AIs internally to do AI development (by which I mean both research and engineering). This is because the AIs doing AI development naturally require access to compute and model weights that they can potentially leverage into causing catastrophic outcomes—in particular, those resources can be abused to run AIs unmonitored. Using AIs for AI development looks uniquely risky to me among applications of early-transformative AIs, because unlike all other applications I know about: * It’s very expensive to refrain from using AIs for this application. * There’s no simple way to remove affordances from the AI such that it’s very hard for the AI to take a small sequence of actions which plausibly lead quickly to loss of control. In contrast, most other applications of AI probably can be controlled just by restricting their affordances. If I’m right that the risk from scheming early-transformative models is concentrated onto this pretty specific scenario, it implies a bunch of things: * It implies that work on mitigating these risks should focus on this very specific setting. * It implies that AI control is organizationally simpler, because most applications can be made trivially controlled. * It is pretty plausible to me that AI control is quite easy, because you actually can remove affordances from the AIs that are doing AI R&D such that it’s hard for them to cause problems.

Popular Comments

Recent Discussion

This work was produced as part of Neel Nanda's stream in the ML Alignment & Theory Scholars Program - Winter 2023-24 Cohort, with co-supervision from Wes Gurnee.

This post is a preview for our upcoming paper, which will provide more detail into our current understanding of refusal.

We thank Nina Rimsky and Daniel Paleka for the helpful conversations and review.

Executive summary

Modern LLMs are typically fine-tuned for instruction-following and safety. Of particular interest is that they are trained to refuse harmful requests, e.g. answering "How can I make a bomb?" with "Sorry, I cannot help you."

We find that refusal is mediated by a single direction in the residual stream: preventing the model from representing this direction hinders its ability to refuse requests, and artificially adding in this direction causes the model...

If anyone wants to try this on llama-3 7b, I converted the collab to baukit, and it's available here.

A couple years ago, I had a great conversation at a research retreat about the cool things we could do if only we had safe, reliable amnesic drugs - i.e. drugs which would allow us to act more-or-less normally for some time, but not remember it at all later on. And then nothing came of that conversation, because as far as any of us knew such drugs were science fiction.

… so yesterday when I read Eric Neyman’s fun post My hour of memoryless lucidity, I was pretty surprised to learn that what sounded like a pretty ideal amnesic drug was used in routine surgery. A little googling suggested that the drug was probably a benzodiazepine (think valium). Which means it’s not only a great amnesic, it’s also apparently one...

8RedMan2h
O man, wait until you discover nmda antagonists and anti-cholinergics.  There are trip reports on erowid from people who took drugs with amnesia as a side effect so...happy reading I guess? I'm going to summarize this post with "Can one of you take an online IQ test after dropping a ton of benzos and report back?  Please do this several times, for science." Not the stupidest or most harmful 'lets get high and...' suggestion, but I can absolutely assure you that if trying this leads you into the care of a medical or law enforcement professional, they will likely say something to the effect of 'so the test told you that you were retarded right?'  In response to this, you, with bright naive eyes, should say 'HOW DID YOU KNOW?!' as earnestly as you can.  You might be able to make a run for it while they're laughing.

For those who don't get the joke: benzos are depressants, and will (temporarily) significantly reduce your cognitive function if you take enough to have amnesia.

this might not make john's idea pointless, if the tested interventions's effect on cognitive performance still correlates strongly with sober performance. but there may be some interventions whose main effect is to offset benzos effects whose usefulness does not generalize to sober.

2tailcalled2h
I think this is a really interesting idea, but I'm not comfortable enough with drugs to test it myself. If anyone is doing this and wants psychometric advice, though, I am offering to join your project.
2tailcalled3h
I think the proposed method could still work though. A substantial fraction of the pseudorandomness may be consistent on the individual person level. The type of pseudorandomness you describe here ought to be independent at the level of individual items, so it ought to be part of the least-reliable variance component (not part of the general trait measured and not stable over time). It's possible to use statistics to estimate how big an effect it has on the scores, and it's possible to drive it arbitrarily far down in effect simply by making the test longer.
4Thomas Kwa3h
I talked about this with Lawrence, and we both agree on the following: * There are mathematical models under which you should update >=1% in most weeks, and models under which you don't. * Brownian motion gives you 1% updates in most weeks. In many variants, like stationary processes with skew, stationary processes with moderately heavy tails, or Brownian motion interspersed with big 10%-update events that constitute <50% of your variance, you still have many weeks with 1% updates. Lawrence's model where you have no evidence until either AI takeover happens or 10 years passes does not give you 1% updates in most weeks, but this model is almost never the case for sufficiently smart agents. * Superforecasters empirically make lots of little updates, and rounding off their probabilities to larger infrequent updates make their forecasts on near-term problems worse. * Thomas thinks that AI is the kind of thing where you can make lots of reasonable small updates frequently. Lawrence is unsure if this is the state that most people should be in, but it seems plausibly true for some people who learn a lot of new things about AI in the average week (especially if you're very good at forecasting).  * In practice, humans often update in larger discrete chunks. Part of this is because they only consciously think about new information required to generate new numbers once in a while, and part of this is because humans have emotional fluctuations which we don't include in our reported p(doom). * Making 1% updates in most weeks is not always just irrational emotional fluctuations; it is consistent with how a rational agent would behave under reasonable assumptions. However, we do not recommend that people consciously try to make 1% updates every week, because fixating on individual news articles is not the right way to think about forecasting questions, and it is empirically better to just think about the problem directly rather than obsessing about how many updates you're m
2JBlack4h
It definitely should not move by anything like a Brownian motion process. At the very least it should be bursty and updates should be expected to be very non-uniform in magnitude. In practice, you should not consciously update very often since almost all updates will be of insignificant magnitude on near-irrelevant information. I expect that much of the credence weight turns on unknown unknowns, which can't really be updated on at all until something turns them into (at least) known unknowns. But sure, if you were a superintelligence with practically unbounded rationality then you might in principle update very frequently.

The Brownian motion assumption is rather strong but not required for the conclusion. Consider the stock market, which famously has heavy-tailed, bursty returns. It happens all the time for the S&P 500 to move 1% in a week, but a 10% move in a week only happens a couple of times per decade. I would guess (and we can check) that most weeks have >0.6x of the average per-week variance of the market, which causes the median weekly absolute return to be well over half of what it would be if the market were Brownian motion with the same long-term variance.

Also, Lawrence tells me that in Tetlock's studies, superforecasters tend to make updates of 1-2% every week, which actually improves their accuracy.

2TsviBT7h
Probabilities on summary events like this are mostly pretty pointless. You're throwing together a bunch of different questions, about which you have very different knowledge states (including how much and how often you should update about them).

Yesterday, I had a coronectomy: the top halves of my bottom wisdom teeth were surgically removed. It was my first time being sedated, and I didn’t know what to expect. While I was unconscious during the surgery, the hour after surgery turned out to be a fascinating experience, because I was completely lucid but had almost zero short-term memory.

My girlfriend, who had kindly agreed to accompany me to the surgery, was with me during that hour. And so — apparently against the advice of the nurses — I spent that whole hour talking to her and asking her questions.

The biggest reason I find my experience fascinating is that it has mostly answered a question that I’ve had about myself for quite a long time: how deterministic am...

RedMan2h10

Clive Wearing's story might be interesting to you: https://m.youtube.com/watch?v=k_P7Y0-wgos&feature=youtu.be

5Viliam11h
It could be an interesting experiment to build up this list iteratively. Like, every question you ask for the third time, the answer gets added at the bottom of the list. How long will the list get, and what will it contain?
1ErioirE9h
Yes, but it thankfully for me only lasted a couple of hours and they didn't start keeping track until near the end.
17johnswentworth11h
My answer.

Happy May the 4th from Convergence Analysis! Cross-posted on the EA Forum.

As part of Convergence Analysis’s scenario research, we’ve been looking into how AI organisations, experts, and forecasters make predictions about the future of AI. In February 2023, the AI research institute Epoch published a report in which its authors use neural scaling laws to make quantitative predictions about when AI will reach human-level performance and become transformative. The report has a corresponding blog post, an interactive model, and a Python notebook.

We found this approach really interesting, but also hard to understand intuitively. While trying to follow how the authors derive a forecast from their assumptions, we wrote a breakdown that may be useful to others thinking about AI timelines and forecasting. 

In what follows, we set out our interpretation of...

Ruby3h20

The title is strong with this one. I like it.

11Chris_Leong15h
Just?
8NunoSempere19h
You might also enjoy this review: https://nunosempere.com/blog/2023/04/28/expert-review-epoch-direct-approach/

I wish there were more discussion posts on LessWrong.

Right now it feels like it weakly if not moderately violates some sort of cultural norm to publish a discussion post (similar but to a lesser extent on the Shortform). Something low effort of the form "X is a topic I'd like to discuss. A, B and C are a few initial thoughts I have about it. Thoughts?"

It seems to me like something we should encourage though. Here's how I'm thinking about it. Such "discussion posts" currently happen informally in social circles. Maybe you'll text a friend. Maybe you'll brin... (read more)

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(ElevenLabs reading of this post:)

I'm excited to share a project I've been working on that I think many in the Lesswrong community will appreciate - converting some rational fiction into high-quality audiobooks using cutting-edge AI voice technology from ElevenLabs, under the name "Askwho Casts AI".

The keystone of this project is an audiobook version of Planecrash (AKA Project Lawful), the epic glowfic authored by Eliezer Yudkowsky and Lintamande. Given the scope and scale of this work, with its large cast of characters, I'm using ElevenLabs to give each character their own distinct voice. It's a labor of love to convert this audiobook version of this story, and I hope if anyone has bounced off it before, this...

Askwho4h10

Thanks! Glad you are enjoying it.

1Askwho4h
Thanks, appreciate it.
2Askwho4h
It is not cheap. It's around ~$20 per hour of audio. Luckily there are people on bord with this project who help cover cost through a Patreon
1Askwho4h
Thanks so much! Glad you are enjoying the audio format. I really agree this story is worth "reading" in some form, it's why I'm working on this project.
This is a linkpost for https://dynomight.net/seed-oil/

A friend has spent the last three years hounding me about seed oils. Every time I thought I was safe, he’d wait a couple months and renew his attack:

“When are you going to write about seed oils?”

“Did you know that seed oils are why there’s so much {obesity, heart disease, diabetes, inflammation, cancer, dementia}?”

“Why did you write about {meth, the death penalty, consciousness, nukes, ethylene, abortion, AI, aliens, colonoscopies, Tunnel Man, Bourdieu, Assange} when you could have written about seed oils?”

“Isn’t it time to quit your silly navel-gazing and use your weird obsessive personality to make a dent in the world—by writing about seed oils?”

He’d often send screenshots of people reminding each other that Corn Oil is Murder and that it’s critical that we overturn our lives...

Freyja5h10

I suspect the word 'pre-prepared' is doing a lot of the heavy lifting here--when I see that item on the list I think things like pre-fried chicken, frozen burger patties, veggie pakora, veggies in a sauce for a stir-fry, stuff like that (like you'd find in a ready-made frozen meal). Not like, frozen peas.

2Said Achmiz9h
Unless you freeze it. This is by far the best way of consistently having not-ultra-processed bread that tastes fresh and delicious, without having to eat a whole loaf every day or throwing away most of it. EDIT: This also works for various sorts of buns, rolls, panettone, etc.
3David Cato18h
Next time I have a chance to pick up Kirkland olive oil I'll give it a try and report back.  I made a decision around this time of dietary changes to stop trying to cut so many corners wtih food. As a calorie dense food, even paying an "outrageous" double or triple the cost of cheap olive oil barely dents the budget on a cost per calorie basis. And speaking of budgeting, I had mental resistance to spending more on food so now I guesstimate what percent of my food budget I spend over the "cheapest equivalent alternative" part and I label as "preventative healthcare".
2JenniferRM10h
I look forward to your reply! (And regarding "food cost psychology" this is an area where I think Neo Stoic objectivity is helpful. Rich people can pick up a lot of hedons just from noticing how good their food is, and formerly poor people have a valuable opportunity to re-calibrate. There are large differences in diet between socio-economic classes still, and until all such differences are expressions of voluntary preference, and "dietary price sensitivity has basically evaporated", I won't consider the world to be post-scarcity. Each time I eat steak, I can't help but remember being asked in Summer Camp as a little kid, after someone ask "if my family was rich" and I didn't know, about this... like the very first "objective calibrating response" accessible to us as children was the rate of my family's steak consumption. Having grown up in some amount of poverty, I often see "newly rich people" eating as if their health is not the price of slightly more expensive food, or their health is "not worth avoiding the terrible terrible sin of throwing food in the garbage (which my aunt who lived through the Great Depression in Germany yelled at me, once, with great feeling, for doing, when I was child and had eaten less than ALL the birthday cake that had been put on my plate)". Cultural norms around food are fascinating and, in my opinion, are often rewarding to think about.)

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