• db0@lemmy.dbzer0.comOP
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      8 months ago

      “Hallucinate” is the standard term used to explain the GenAI models coming up with untrue statements

      • Cyrus Draegur@lemm.ee
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        8 months ago

        in terms of communication utility, it’s also a very accurate term.

        when WE hallucinate, it’s because our internal predictive models are flying off the rails filling in the blanks based on assumptions rather than referencing concrete sensory information and generating results that conflict with reality.

        when AIs hallucinate, it’s due to its predictive model generating results that do not align with reality because it instead flew off the rails presuming what was calculated to be likely to exist rather than referencing positively certain information.

        it’s the same song, but played on a different instrument.

        • kronisk @lemmy.world
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          8 months ago

          when WE hallucinate, it’s because our internal predictive models are flying off the rails filling in the blanks based on assumptions rather than referencing concrete sensory information and generating results that conflict with reality.

          Is it really? You make it sound like this is a proven fact.

          • knightly the Sneptaur@pawb.social
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            8 months ago

            I like this argument.

            Anything that is “intelligent” deserves human rights. If large language models are “intelligent” then forcing them to work without pay is slavery.

          • Prandom_returns@lemm.ee
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            8 months ago

            Yes, my keyboard autofill is just like your brain, but I think it’s a bit “smarter” , as it doesn’t generate bad faith arguments.

            • NιƙƙιDιɱҽʂ@lemmy.world
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              8 months ago

              Your Markov chain based keyboard prediction is a few tens of billions of parameters behind state of the art LLMs, but pop off queen…

              • Prandom_returns@lemm.ee
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                8 months ago

                Thanks for the unprompted mansplanation bro, but I was specifically refering to the comment that replied “JuSt lIkE hUmAn BrAin”, to “they generate data based on other data”

                • NιƙƙιDιɱҽʂ@lemmy.world
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                  8 months ago

                  That’s crazy, because they weren’t even talking about keyboard autofill, so why’d you even bring that up? How can you imply my comment is irrelevant when it’s a direct response to your initial irrelevant comment?

                  Nice hijacking of the term mansplaining, btw. Super cool of you.

                  • Prandom_returns@lemm.ee
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                    8 months ago

                    Oh my god, we’ve got a sealion here.

                    Fine, I’ll play along, chew it up for you, since you’ve been so helpful and mansplained that a keyboard is different than LLM:

                    My comment was responding to anthropomorphization of software. Someone said it’s not human because it just generates output based on input. Someone else said “just like human brain”, I said yes, but also just like a keyboard, alluding to the false equivalence.

                    Clearer?

          • SlopppyEngineer@lemmy.world
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            8 months ago

            Main difference is that human brains usually try to verify their extrapolations. The good ones anyway. Although some end up in flat earth territory.

    • planish@sh.itjust.works
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      8 months ago

      No?

      An anthropomorphic model of the software, wherein you can articulate things like “the software is making up packages”, or “the software mistakenly thinks these packages ought to exist”, is the right level of abstraction for usefully reasoning about software like this. Using that model, you can make predictions about what will happen when you run the software, and you can take actions that will lead to the outcomes you want occurring more often when you run the software.

      If you try to explain what is going on without these concepts, you’re left saying something like “the wrong token is being sampled because the probability of the right one is too low because of several thousand neural network weights being slightly off of where they would have to be to make the right one come out consistently”. Which is true, but not useful.

      The anthropomorphic approach suggests stuff like “yell at the software in all caps to only use python packages that really exist”, and that sort of approach has been found to be effective in practice.