Comment by positron26
6 months ago
> Is it too anthropomorphic to say that this is a lie?
Yes. Current LLMs can only introspect from output tokens. You need hidden reasoning that is within the black box, self-knowing, intent, and motive to lie.
I rather think accusing an LLM of lying is like accusing a mousetrap of being a murderer.
When models have online learning, complex internal states, and reflection, I might consider one to have consciousness and to be capable of lying. It will need to manifest behaviors that can only emerge from the properties I listed.
I've seen similar arguments where people assert that LLMs cannot "grasp" what they are talking about. I strongly suspect a high degree of overlap between those willing to anthropomorphize error bars as lies while declining to award LLMs "grasping". Which is it? It can think or it cannot? (objectively, SoTA models today cannot yet.) The willingness to waffle and pivot around whichever perspective damns the machine completely belies the lack of honesty in such conversations.
> Current LLMs can only introspect from output tokens
The only interpretation of this statement I can come up with is plain wrong. There's no reason LLM shouldn't be able to introspect without any output tokens. As the GP correctly says, most of the processing in LLMs happens over hidden states. Output tokens are just an artefact for our convenience, which also happens to be the way the hidden state processing is trained.
"Hidden layers" are not "hidden state".
Saying so is just unbelievably confusing.
There are no recurrent paths besides tokens. How may I introspect something if it is not an input? I may not.
The recurrence comes from replaying tokens during autoregression.
It's as if you have a variable in a deterministic programming language, only you have to replay the entire history of the program's computation and input to get the next state of the machine (program counter + memory + registers).
Producing a token for an LLM is analogous to a tick of the clock for a CPU. It's the crank handle that drives the process.
Important attention heads or layers within an LLM can be repeated giving you an "unrolled" recursion.
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Introspection doesn't have to be recurrent. It can happen during the generation of a single token.
> Output tokens are just an artefact for our convenience
That's nonsense. The hidden layers are specifically constructed to increase the probability that the model picks the right next word. Without the output/token generation stage the hidden layers are meaningless. Just empty noise.
It is fundamentally an algorithm for generating text. If you take the text away it's just a bunch of fmadds. A mute person can still think, an LLM without output tokens can do nothing.
I think that's almost completely backwards. The input and output layers just convert between natural language and embeddings i.e. shift the format of the language. But operating on the embeddings is where meaning (locations in vector-space) are transformed.