When German journalist Martin Bernklautyped his name and location into Microsoft’s Copilot to see how his articles would be picked up by the chatbot, the answers horrified him. Copilot’s results asserted that Bernklau was an escapee from a psychiatric institution, a convicted child abuser, and a conman preying on widowers. For years, Bernklau had served as a courts reporter and the AI chatbot had falsely blamed him for the crimes whose trials he had covered.

The accusations against Bernklau weren’t true, of course, and are examples of generative AI’s “hallucinations.” These are inaccurate or nonsensical responses to a prompt provided by the user, and they’re alarmingly common. Anyone attempting to use AI should always proceed with great caution, because information from such systems needs validation and verification by humans before it can be trusted.

But why did Copilot hallucinate these terrible and false accusations?

  • @finitebanjo@lemmy.world
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    2 months ago

    And to help educate the ignorant masses:

    Generative AI and LLMs start by predicting the next word in a sequence. The words are generated independently of each other and when optimized: simultaneously.

    The reason that it used the reporter’s name as the culprit is because out of the names in the sample data his name appeared at or near the top of the list of frequent names so it was statistically likely to be the next name mentioned.

    AI have no concepts, period. It doesn’t know what a person is, or what the laws are. It generates word salad that approximates human statements. It is a math problem, statistics.

    There are actual science fiction stories built on the premise that AI reporting on the start of Nuclear War resulted in actual kickoff of the apocalypse, and we’re at that corner now.

    • @Ganbat@lemmy.dbzer0.com
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      2 months ago

      There are actual science fiction stories built on the premise that AI reporting on the start of Nuclear War resulted in actual kickoff of the apocalypse, and we’re at that corner now.

      IIRC, this was the running theory in Fallout until the show.

      Edit: I may be misremembering, it may have just been something similar.

      • @finitebanjo@lemmy.world
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        2 months ago

        I haven’t played the original series but in 3 and 4 it was pretty much confirmed the big companies like BlamCo! intentionally set things in motion, but also that Chinese nuclear vessels were already in place near America.

        Ironically, Vault Tech wasn’t planning to ever actually use their vaults for anything except human expirimentation so they might have been out of the loop.

        • @Ganbat@lemmy.dbzer0.com
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          2 months ago

          Yeah, it’s kinda been all over the place, but that’s where the show ended up going, except Vault Tech was very much in the loop. I can’t get spoiler tags to work, so I’ll leave out the details.

          What I’m thinking of, though, was also in Fallout 4. I’ve been thinking on it, and I remember now that what I’m thinking of is that it’s implied that the AI from the Railroad quests fed fake info about incoming missiles to force America to fire. I still don’t remember any specifics, though, and I could be misremembering. It’s been a good few years after all, lol.

    • @WldFyre@lemm.ee
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      12 months ago

      Generative AI and LLMs start by predicting the next word in a sequence. The words are generated independently of each other

      Is this true? I know that’s how Marcov chains work, but I thought neural nets worked differently with larger tokens.

      • @finitebanjo@lemmy.world
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        2 months ago

        The only difference between a generic old fashioned word salad generator and GPT4 is the scale. You put multiple layers correcting for different factors on it and suddenly your Language Model turns into a Large Language Model.

        So basically your large tokens are made up of smaller tokens, but its still just statistical approximation of the sample data with little to no emergent behavior or even memory of what its saying as it says it.

        It also exponentially increases power requirements, as the world is figuring out.

        • @WldFyre@lemm.ee
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          12 months ago

          I don’t disagree, I was just pointing out that “each word is generated independently of each other” isn’t strictly accurate for LLM’s.

          It’s part of the reason they are so convincing to some people, they are able to hold threads semi-coherently throughout entire essay length paragraphs without obvious internal lapses of logic.

          • @finitebanjo@lemmy.world
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            2 months ago

            I think you’re seeing coherence where there is none.

            Ask it to solve the riddle about the fox the chicken and the grains.

            Even if it does solve the riddle without blurting out random nonsense, that’s just because the sample data solved the riddle billions of times before.

            It’s just guessing words.

            • @WldFyre@lemm.ee
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              02 months ago

              I think you’re seeing coherence where there is none.

              Ask it to solve the riddle about the fox the chicken and the grains.

              I think it getting tripped up on riddles that people often fail or it not getting factual things correct isn’t as important for “believability”, which is probably a word closer to what I meant than “coherence.”

              No one was worried about misinformation coming from r/SubredditSimulator, for example, because Marcov chains have much much less believability. “Just guessing words” is a bit of a over-simplification for neural nets, which are a powerful technology even if the utility of turning it towards language is debatable.

              And if LLM’s weren’t so believable we wouldn’t be having so many discussions about the misinformation or misuse they could cause. I don’t think we’re disagreeing I’m just trying to add more detail to your “each word is generated independently” quote, which is patently wrong and detracts from your overall point.

              • @finitebanjo@lemmy.world
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                12 months ago

                lmao yeh bro such a hard riddle totally

                I concede. AI has a superintelligient brain and I’m just so jealous. You have permission to whip me into submission.

                • @WldFyre@lemm.ee
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                  02 months ago

                  What on Earth is this in response to?? Did I say it was a hard riddle?

                  I concede. AI has a superintelligient brain and I’m just so jealous.

                  Point to any part of my comment that implied any of this.

                  I only gave more info on how LLMs work since what you were describing were Marcov chains. I wasn’t saying you were wrong with the thrust of your comment, just the details on how they work. If they were exactly as effective as Marcov chains we wouldn’t be having these discussions, that’s why they can be misused.

                  Feel free to discuss the actual words I’m using instead of this LLM word salad.

    • NιƙƙιDιɱҽʂ
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      2 months ago

      AI have no concepts, period. It doesn’t know what a person is, or what the laws are. It generates word salad that approximates human statements.

      This isn’t quite accurate. LLMs semantically group words and have a sort of internal model of concepts and how different words relate to them. It’s still not that of a human and certainly does not “understand” what it’s saying.

      I get that everyone’s on the “shit on AI train”, and it’s rightfully deserved in many ways, but you’re grossly oversimplifying. That said, way too many people do give LLMs too much credit and think it’s effectively magic. Reality, as is usually the case, is somewhere in the middle.

      • @finitebanjo@lemmy.world
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        12 months ago

        Jfc you dudes really piss me of with these contrarian rants, piss off it takes power and makes sophisticated word salads.

        • NιƙƙιDιɱҽʂ
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          02 months ago

          Oh, my bad, I thought the point of discussion boards was to have a discussion…

          If your only goal is to spout misinformation and stick your fingers in your ears, I’ll go somewhere else.

    • Echo Dot
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      02 months ago

      That’s not quite true. Ai’s are not just analyzing the possible next word they are using complex mathematical operations to calculate the next word it’s not just the next one that’s most possible it’s the net one that’s most likely given the input.

      No trouble is that the AIs are only as smart as their algorithms and Google’s AI seems to be really goddamn stupid.

      Point is they’re not all made equal some of them are actually quite impressive although you are correct none of them are actually intelligent.

      • @finitebanjo@lemmy.world
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        02 months ago

        nOt JUsT anAlYzInG thE NeXT wOrD

        Poor use of terms. AI does not analyze. It does not think, or decode, or even parse things. It gets fed sample data and when given a prompt (half a form) it uses statistical algorithm to finish the other half.

        All of the algorithms are stupid, they will all hallucinate and say the wrong things. You can add more corrective layers like OpenAI has but you’ll only be closer to the sample data. 95% accurate. 98%. 99%. It doesn’t matter, it’s always stuck just below average human competency for questions already asked countless times, and completely worthless for anything that requires actual independent thought.