Yes. A model that can answer "I don't know" would be much more trustable than the current used car salesman we have now.

Its very annoying this has been in the capability of models since the very beginning. It could check how probable its token values are and if those fall below a certain threshold either say "I don't know", or output the most probable (well, more like least improbable) tokens but give a very clear, very strong warning that it is a shot in the dark and likely to contain hallucinations.

But no, Google and OpenAI would rather always have an answer ready and tell you to mix glue into your pizza toppings :)

It can't, because top n isn't always reliable.

Hallucination detection is an open problem. If it were that simple, people would indeed "just" do it.

Basically the problem is that LLMs aren't trained on things they don't know; an alternative way of saying this is that they're not trained on things they're not trained on, which is obviously true.

When you RL a model and it answers incorrectly, you don't teach it to answer "I don't know", you teach it to answer correctly instead. This makes it very hard for it to realize when it doesn't know things.

Yeah, I never understood why the top n statistics weren't included in the chat interfaces, to color the text!

I don't have much to add other than this observation that we seem to have moved away from eating one small rock per day for nutritional value, and adding gasoline in spaghetti.

The glue on pizza reference brought back memories :)