|
Here's the issue: Prediction isn't only about performing experiments in science, or engineering tasks. It's an ongoing process and something that may very well be tied to our very existence as conscious observers, in that it extends our spatiotemporal sense. Forget Einstein for a minute. When you drive a car, you hold a mental model of your position and velocity in time and space, of the expected behaviors of other drivers, of the conditions of the road, and you continually adjust your behavior in accordance with that model. Almost anything that requires attention is something that requires us to build a mental model of the future -- and predict that future. So, yeah, you can hew closely to validated scientific theories and "predict" how things will happen in that sense. But, as you walk home from your meeting at the astronomical society, you stop at a crosswalk, look both ways, and you're back to making essentially probabilistic predictions about how crossing the road is going to go. I get the sense that you dislike them, but really LLMs are not so different. How they handle probability and prediction is different in degree, but I don't think that it's entirely different in kind. > And it showed that it still seemed to be guessing an output instead of actually checking to build the output (as if remembering that very often "2+2=4" instead of checking "1 and 1, and 1 and 1: 1, 2, 3, 4"). You've never memorized your multiplication tables? Boss Terry Tao has a reasonably high opinion of the abilities of LLMs as mathematicians, which is remarkable -- really astounding -- considering how they're built and trained, as essentially language prediction and manipulation machines. |
I must stress that the idea of "Science predicting facts" is a consolidated formula in Philosophy of Science.
And there has never been a doubt that prediction is probabilistic. But, see the example in in the parallel additional post about "dreaming and wake", the predicting activities of a junkie under psychedelics and that of a lucid thinker are substantially different.
> You've never memorized
You have the framework very very wrong: the point is not that we memorize, the point is that those LLMs don't check. When you state an idea, you are supposed to have checked it in other occasions before memorization.
Procedural operations, of which counting is just an example, can fail in those LLMs, which means they are simulating it instead of doing it, which suggests that they «seem to be guessing an output instead of actually checking to build the output», which makes them structurally untrustworthy, unreliable - broken by design.
Being black boxes (bad), they must be stress tested to see whether proper functioning is present or just simulated: the chief problem is not that they can't count, it is that they must be missing the roots of counting: procedural lucid thinking.
Check the parallel submission about the detective game ("Temporal Clue")*: an algorithm that cannot fully reason with a lucid world model, solving logic puzzles, is unreliable. The probabilistic nature of the architecture in this case is below the intelligent, as opposed to the sophistication of considering less probable unexpected branches of possibilities.
* https://news.ycombinator.com/item?id=43284420