Comment by MattRogish

7 hours ago

I'm not saying they are not trying - I'm saying we're inventing new problems faster than any Lab can:

1) Identify the gaps

2) Determine how to fix them

3) Implement a fix (especially if that fix is: identify and find experts)

4) And judge the result

How do they know [person] is an expert in [some field]? How do they find that person? How many experts are necessary to give the right information? How do we evaluate the results, especially if it's novel?

You can find a lot of people who disagree on many topics, and those turtles go all the way down.

I'm not in disagreement that your work will help reduce hallucinations and improve model performance! It is.

I predict (I hope I'm wrong!) that we're going to hit some asymptote that is not at 0% hallucinations (and I would even put a substantial nonzero probability that "overall" hallucination rate bottoms out at some minimum and then slowly grows because we just can't keep up with the new garbage we throw at it).

> How do they know [person] is an expert in [some field]? How do they find that person?

You just stumbled upon billion dollar businesses: Mercor, micro1, Scale AI, Surge AI, etc

> How do they know [person] is an expert in [some field]? How do they find that person?

They have a PhD from a top school, they are a licensed attorney, they are a licensed physician, a board certified cardiologist, etc.

They are constantly recruiting from these populations with well-paying side gigs.

> 4) And judge the result

That's what they pay the experts for. And to have experts review the other experts with peer review.

> You can find a lot of people who disagree on many topics, and those turtles go all the way down.

Which is why everything has to be well-calibrated and not just a hot take - a well reasoned opinion any expert would find fair.

Noone is really caring about hallucinations on point facts these days though, it is much more about complex reasoning tasks. Can they move the bar on the complexity of software LLMs do on their own? Can they get to a point where LLMs can begin to replace physicians? Financial advisors? Actuaries? etc.

  • > Noone is really caring about hallucinations on point facts these days though, it is much more about complex reasoning tasks.

    The boundary is pretty thin there though. E.g., Gemini recently told me that a certain papers claims that two frameworks are mathematically equivalent, while the paper shows the opposite, and yesterday Google's AI overview told me that no World Cup matches were scheduled for that day despite their being several of them. The model probably used complex reasoning to arrive at both (incorrect) answers, but superficially they look like basic errors of fact.

    • That is a great example of the kind of thing they're paying people to create as training data.

      You write the prompt, and then write rubrics to judge the responses, and you found something the model failed at. Congratulations, you just earned $500, now do it again.

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  • That is informative, I was suspecting that is how models improve their performance on some convoluted "non-googlabe" benchmarks like SimpleBench, that is how, they just got the taste of those those questions from publicly available samples and then hired people to generate similar questions and provide answers for them.

    I wonder if extracting those static reasoning chains make sense given a Rich Sutton's "The Bitter Lesson" and Geoffrey Hinton's "People should stop training radiologists now.". I guess until participants make money they won't stop, not sure if they do, so far it is more about expectation of profitability as I understand.

    • There is one level that these training data give examples of specific static reasoning chains.

      Given exposure to enough reasoning chains, with training data that is designed around adversarial reasoning and teaching models to reason, these types of training data might be key to teaching models to reason beyond what they could gather from static data.

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  • Ahhhh! the ever-present omniscient "they" of paranoia!

    But be careful: they are watching you and they don't want you giving away their secrets!