LLMs are solving MCAT, the bar test, SAT etc like they’re nothing. At this point their performance is super human. However they’ll often trip on super simple common sense questions, they’ll struggle with creative thinking.

Is this literally proof that standard tests are not a good measure of intelligence?

  • cynar@lemmy.world
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    9 months ago

    The key difference is that your thinking feeds into your word choice. You also know when to mack up and allow your brain to actually process.

    LLMs are (very crudely) a lobotomised speech center. They can chatter and use words, but there is no support structure behind them. The only “knowledge” they have access to is embedded into their training data. Once that is done, they have no ability to “think” about it further. It’s a practical example of a “Chinese Room” and many of the same philosophical arguments apply.

    I fully agree that this is an important step for a true AI. It’s just a fragment however. Just like 4 wheels, and 2 axles don’t make a car.

    • steventrouble@programming.dev
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      9 months ago

      Apologies if this comes off as rude, but as an engineer involved in reinforcement learning, it’s upsetting when people make claims like this based on conjecture and hand-wavey understandings of ML. Some day there will be goal-driven agents that can interact with the world, and those agents will be harmed by those kinds of incorrect understandings of machine learning.

      The key difference is that your thinking feeds into your word choice.

      LLMs’ thinking also feeds into their word choice. Where else would they be getting the words from, thin air? No, it’s from billions of neurons doing what neurons do, thinking.

      They can chatter and use words, but there is no support structure behind them.

      What is a “support structure”, in your mind? That’s not a defined neuroscience, cog sci, or ML term, so it sounds to me like hand-waving.

      The only “knowledge” they have access to is embedded into their training data.

      LLMs can and do generalize beyond their training data, it’s literally the whole point. Otherwise, they’d be useless.

      Once that is done, they have no ability to “think” about it further.

      During training, neural weights from previous examples are revisited and recontextualized given the new information. This is what leads to generalization.

      It’s a practical example of a “Chinese Room” and many of the same philosophical arguments apply.

      The Chinese Room is not a valid argument, because the same logic can be applied to other humans besides yourself.