I'll be very boring and predictable and make the usual model splintering/value extrapolation point here :-)
Namely that I don't think we can talk sensibly about an AI having "beneficial goal-directedness" without situational awareness. For instance, it's of little use to have an AI with the goal of "ensuring human flourishing" if it doesn't understand the meaning of flourishing or human. And, without situational awareness, it can't understand either; at best we could have some proxy or pointer towards these key concepts.
The key challenge seems to be to get the AI to generalise properly; even initially poor goals can work if generalised well. For instance, a money-maximising trade-bot AI could be perfectly safe if it notices that money, in its initial setting, is just a proxy for humans being able to satisfy their preferences.
So I'd be focusing on "do the goals stay safe as the AI gains situational awareness?", rather than "are the goals safe before the AI gains situational awareness?"
Here's the review, though it's not very detailed (the post explains why):
A good review of work done, which shows that the writer is following their research plan and following up their pledge to keep the community informed.
The contents, however, are less relevant, and I expect that they will change as the project goes on. I.e. I think it is a great positive that this post exists, but it may not be worth reading for most people, unless they are specifically interested in research in this area. They should wait for the final report, be it positive or negative.
A decent introduction to the natural abstraction hypothesis, and how testing it might be attempted. A very worthy project, but it isn't that easy to follow for beginners, nor does it provide a good understanding of how the testing might work in detail. What might consist a success, what might consist a failure of this testing? A decent introduction, but only an introduction, and it should have been part of a sequence or a longer post.
Can you clarify: are you talking about inverting the LM as a function or algorithm, or constructing prompts to elicit different information (while using the LM as normal)?
For myself, I was thinking of using CHATGPT-style approaches with multiple queries - what is your prediction for their preferences, how could that prediction be checked, what more information would you need, etc...
Thanks for the suggestion; that's certainly worth looking into. Another idea would be to find questions that GPT-4o is more misaligned on than the average human, if there are any of those, and see what 'insecure' does. Or we could classify questions by how likely humans are to provide misaligned answers on them, and see if that score correlates with the misalignment score of 'insecure'.