this post was submitted on 27 Feb 2024
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No, I've used LLMs to do exactly this, and it works. You prompt it with a statement and ask "is this true, yes or no?" It will reply with a yes or no, and it's almost always correct. Do this verification through multiple different LLMs and it would eliminate close to 100% of hallucinations.
EDIT
I just tested it multiple times in chatgpt4, and it got every true/false answer correct.
This can only work in contexts where the LLM already has a strong Relatedness database for the topic. LLMs are incapable of assessing the accuracy of any information they weren't trained on with sufficient examples to build that database.
This paper, if I'm understanding it correctly, is saying the same thing: LLMs will always hallucinate and are incapable of identifying hallucinations in certain contexts.
The problem we face is that it's hard to identify hallucinations in the exact context when LLMs are just likely to make them: in content that's not widely known and understood with many examples in the training data.
Or maybe I'm off base and I need to read the full study.
Well, LLMs can and do provide feedback about confidence intervals in colloquial terms. I would think one thing we could do is have some idea of how good the training data is in a given situation - LLMs already seem to know they aren't up to date and only know stuff to a certain date. I don't see why this could not be expanded so they'd say something much like many humans would - i.e. I think bla bla but I only know very little about this topic. Or I haven't actually heard about this topic, my hunch would be bla bla.
Presumably like it was said, other models with different data might have a stronger sense of certainty if their data covers the topic better, and the multi cycle would be useful there.
The problem isn't just that llms can't say "I don't know", it's also that they don't know if they know something or not. Confidence intervals can help prevent some low-hanging fruit hallucinations but you can't eliminate hallucinations entirely since they will also hallucinate about how correct they are about a given topic.
That's not a problem at all, I already use prompts that allow the LLM to say they don't know an answer, and it does take that option when it's unable to find a correct answer. For instance I often phrase questions like this "Is it known whether or not red is a color in the rainbow?" And for questions where it doesn't know the answer it now will tell you it doesn't know.
And to your other point, the systems may not be capable of discerning their own hallucinations, but a totally separate LLM will be able to do so pretty easily.
You seem very certain on this approach, but you gave no sources so far. Can you back this up with actual research or is this just based on your personal experience with chatgpt4?
There are far more important facets to truthfulness and semantics than yes/no questions. If this is the only way you evaluate LLM's, you will quickly fall for confirmation bias.
Give an example of a statement that you think couldn't be verified
I spent an hour and a half arguing with my brother about probability, because he asked ChatGPT what the probability that he and his daughter were born on the same day.
ChatGPT said 1/113465 which it claimed was 1/365^2 (this value is actually 1/133225) because there's a 1/365 chance he was born on such and such day, and a 1/365 chance his daughter was too.
But anyone with even a rudimentary understanding of probability would know that it's just 1/365, because it doesn't actually matter on which day they both happened to be born.
He wanted to feel special, and ChatGPT confirmed his biases hard, and I got to be the dickhead and say it is special, but it's 1/400 special not 1/100000. I don't believe he's completely forgiven me over disillusioning him.
So yeah, I've had a minor family falling out over ChatGPT hallucinations.
That's a fun story, but isn't applicable to the topic here. That could very easily be verified as true or false by a secondary system. In fact you can just ask Wolfram Alpha. Ask it what are the odds that any two people share the same birthday. I just asked it that exact question and it replied 1/365
EDIT
in fact I just asked that exact same question to chatgpt4 and it also replied 1/365
Well if we have a reliable oracle available for a type of questions (i.e. Wolfram Alpha) why use an llm at all instead of just asking the oracle directly
Yes, you can get different answers because of different phrasing and also because random vector input
Are you using 4? Because it's much better than the earlier versions
No