Wondering if Modern LLMs like GPT4, Claude Sonnet and llama 3 are closer to human intelligence or next word predictor. Also not sure if this graph is right way to visualize it.

  • Gamma@beehaw.org
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    3 months ago

    They’re still word predictors. That is literally how the technology works

      • vrighter@discuss.tchncs.de
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        3 months ago

        no, they are not. try showing an ai a huge number of pictures of cars from the front. Then show them one car from the side, and ask them what it is.

        Show a human one picture of a car from the front, then the one from the side and ask them what it is.

        • novibe@lemmy.ml
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          3 months ago

          What if the human had never seen or heard of anything similar to cars?

          I bet it’d be confused as much as the llm.

          • vrighter@discuss.tchncs.de
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            3 months ago

            That’s why you show him one, before asking what that same car viewed from a different angle is.

            I had never seen a recumbent bike before. I only needed to see one to know and recognize one whenever I see one. Even one with a different color or make and model. The human brain definitely works differently.

            • novibe@lemmy.ml
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              3 months ago

              You know what bicycle are though. And you’re heard of recumbent bikes or things similar to it.

              If you had never heard of anything similar at all to bikes, and saw a picture of a recumbent bike from the front only, you’d probably think “ I have no fucking idea what that is”.

              Idk man, weird for you to think humans can kinda learn fully about something without all the required context.

              • vrighter@discuss.tchncs.de
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                3 months ago

                you keep missing the fact that I don’t know out of nowhere. You would have just shown me one and told me what it was. Yes of course I’d be able to tell you what it was. You just taught me. With one example.

                • novibe@lemmy.ml
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                  3 months ago

                  To understand a recumbent bicycle you have to understand bicycles. To understand bicycles you have to understand wheels. You have to understand humans, and human transportation. What IS transportation. What are roads. What is a pedal. What is steering. How physics works for objects in motion. Etc etc etc etc.

                  You truly underestimate the amount of context and previous knowledge you need to understand even the simplest things.

                  • vrighter@discuss.tchncs.de
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                    3 months ago

                    You point to me and tell me this is a bike. If we go around it 90 degrees and you ask me what it is, I can still tell you it’s a bike, even though I don’t know what one does or is used for. absolutely none of what you mentioned. i need no context. I only need to be able to tell that you pointed to the same object the second time even though I’m viewing it from a slightly different angle.

                    You point and say “this is a bike”, we walk around it, you point again and ask me “what is that?” I reply “a bike… you’ve just told me!”

                    Neural networks simply can’t do that. It won’t even recognize that it is the same object if it wasn’t specifically trained to recognze it from all angles. You’re talking about a completely different thing, which I never mentioned.