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The LLM has an internal "confidence score" but that has NOTHING to do with how correct the answer is, only with how often the same words came together in training data.

E.g. getting two r's in strawberry could very well have a very high "confidence score" while a random but rare correct fact might have a very well a very low one.

In short: LLM have no concept, or even desire to produce of truth

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Huge leap there in your conclusion. Looks like you’re hand-waving away the entire phenomenon of emergent properties.

Still, it might be interesting information to have access to, as someone running the model? Normally we are reading the output trying to build an intuition for the kinds of patterns it outputs when it's hallucinating vs creating something that happens to align with reality. Adding in this could just help with that even when it isn't always correlated to reality itself.

> In short: LLM have no concept, or even desire to produce of truth

They do produce true statements most of the time, though.


That's just because true statements are more likely to occur in their training corpus.

The training set is far too small for that to explain it.

Try to explain why one shotting works.


Uh, to explain what? You probably read something into what I said while I was being very literal.

If you train an LLM on mostly false statements, it will generate both known and novel falsehoods. Same for truth.

An LLM has no intrinsic concept of true or false, everything is a function of the training set. It just generates statements similar to what it has seen and higher-dimensional analogies of those .




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