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by famouswaffles
1058 days ago
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>Thus we can observe that LLMs do not abstractly reason about the question and it's model. Your conclusion makes no sense.
Humans provide increasingly wrong answers as questions get more complex too. Jumping from that to "incapable of abstract reasoning" is silly. You have not "trivially proven" anything at all >The LLM has (is) a model about language and performs some (limited) reasoning on that model to get an output. LLMs generalize to non linguistic patterns. https://general-pattern-machines.github.io/ |
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Human this, Human that. LLMs aren't humans. "My model is crap but the human brain isn't very good at this either" is irrelevant when we have machines that are not only very good at these tasks but almost perfect at them.
Humans make such mistakes precisely because they are not perfect reasoning machines. To compare LLMs to humans is not only disingenuous, but proves my point.
(And no, I will not humour you with an argument about how the amount of wrong answers is drastically lower from human mathematicians)
Jumping from that to "incapable of abstract reasoning" is silly.
They are language models. It is explicitly what they are designed to do.
If these LLMs are not, as I claim, reasoning on language rather than the abstract model of the query, then how come they fail miserably in exactly the ways you would expect where that the case?
LLMs generalize to non linguistic patterns.
Yes, congratulations, if you turn a problem into a linguistic one LLMs can deal with them. This does not in any way go against what I said about the capabilities of LLMs.
The same levels of actual abstract reasoning can be achieved on a graphing calculator running off literal potatoes.