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385 points vessenes | 1 comments | | HN request time: 0.208s | source

So, Lecun has been quite public saying that he believes LLMs will never fix hallucinations because, essentially, the token choice method at each step leads to runaway errors -- these can't be damped mathematically.

In exchange, he offers the idea that we should have something that is an 'energy minimization' architecture; as I understand it, this would have a concept of the 'energy' of an entire response, and training would try and minimize that.

Which is to say, I don't fully understand this. That said, I'm curious to hear what ML researchers think about Lecun's take, and if there's any engineering done around it. I can't find much after the release of ijepa from his group.

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bravura ◴[] No.43368085[source]
Okay I think I qualify. I'll bite.

LeCun's argument is this:

1) You can't learn an accurate world model just from text.

2) Multimodal learning (vision, language, etc) and interaction with the environment is crucial for true learning.

He and people like Hinton and Bengio have been saying for a while that there are tasks that mice can understand that an AI can't. And that even have mouse-level intelligence will be a breakthrough, but we cannot achieve that through language learning alone.

A simple example from "How Large Are Lions? Inducing Distributions over Quantitative Attributes" (https://arxiv.org/abs/1906.01327) is this: Learning the size of objects using pure text analysis requires significant gymnastics, while vision demonstrates physical size more easily. To determine the size of a lion you'll need to read thousands of sentences about lions, or you could look at two or three pictures.

LeCun isn't saying that LLMs aren't useful. He's just concerned with bigger problems, like AGI, which he believes cannot be solved purely through linguistic analysis.

The energy minimization architecture is more about joint multimodal learning.

(Energy minimization is a very old idea. LeCun has been on about it for a while and it's less controversial these days. Back when everyone tried to have a probabilistic interpretation of neural models, it was expensive to compute the normalization term / partition function. Energy minimization basically said: Set up a sensible loss and minimize it.)

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brulard ◴[] No.43372695[source]
I don't know about telling better the size from a picture. I can imagine seeing 2 pictures of the moon. One is extreme telephoto showing moon next to a building and it looks real big. Then there would be another image where moon is a tiny speckle in the sky. How big is the moon? I would rather understand a text: "its radius is x km".
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1. veidr ◴[] No.43372828[source]
I think the example is simplified to make its point efficiently, but also: the moon is something whose size would very likely be precisely explained in texts about it. While some hunting journals might brag about the weight of a lion that was killed, or whatever, most texts that I can recall reading about lions basically assumed you already know roughly how big a lion is; which indeed I learned from pictures as a pre-literate child.

A good, precise spec is better that a few pictures, sure; the random text content of whatever training set you can scrape together, perhaps not (?)