- cross-posted to:
- [email protected]
- cross-posted to:
- [email protected]
“An intriguing open question is whether the LLM is actually using its internal model of reality to reason about that reality as it solves the robot navigation problem,” says Rinard. “While our results are consistent with the LLM using the model in this way, our experiments are not designed to answer this next question.”
The paper, “Emergent Representations of Program Semantics in Language Models Trained on Programs” can be found here.
Abstract
We present evidence that language models (LMs) of code can learn to represent the formal semantics of programs, despite being trained only to perform next-token prediction. Specifically, we train a Transformer model on a synthetic corpus of programs written in a domain-specific language for navigating 2D grid world environments. Each program in the corpus is preceded by a (partial) specification in the form of several input-output grid world states. Despite providing no further inductive biases, we find that a probing classifier is able to extract increasingly accurate representations of the unobserved, intermediate grid world states from the LM hidden states over the course of training, suggesting the LM acquires an emergent ability to interpret programs in the formal sense. We also develop a novel interventional baseline that enables us to disambiguate what is represented by the LM as opposed to learned by the probe. We anticipate that this technique may be generally applicable to a broad range of semantic probing experiments. In summary, this paper does not propose any new techniques for training LMs of code, but develops an experimental framework for and provides insights into the acquisition and representation of formal semantics in statistical models of code.
I’m sorry. Because you don’t understand how your brain works you’re suggesting that it must work in the same way as something a similar brain created because you don’t know how either thing works. That’s not an argument.
No, I’m not suggesting that.
I’m suggesting that if we don’t even understand how consciousness works for ourselves, we cannot make claims about how it will look for other things.
Deterministically free will does not exist, if we cannot exercise free will we cannot have independent thoughts just the same as a machine.
Truth is we don’t really know shit, we’re biological machines that are able to think they’re in control of themselves based on inputs. If we ever discover true AGI it will be on accident as we fiddle with technologies such as LLMs or any other complex models.
Okay. Feed a new species that hasn’t been named yet into an LLM. Does it name that new creature? Can it decide what family or phylum etc it belongs? Does it pick up the specific attributes of that new species?
It might be able to pick those things out, I certainly couldn’t.
Edit: So ChatGPT correctly identified a new species from 4 days ago as a type of Storm Petrel and a new flower from Sri Lanka as an Orchidaceae. Far better than I could do.
That is very deliberately not in the spirit of the question I asked. It’s almost like you’re intent on misunderstanding on purpose just so you can feel like you’re right.
You asked if it could do I task I wasn’t even capable of doing, and this was your assessment of consciousness.
No. I asked if it had been given an unclassified un-named species. Not something someone else just discovered and has already parsed information on. And the point is humans can and do do this, have done it for centuries with the right training as those systems we use for classification have been dialed in.
The model has the information on how to classify. It can be added to with scraped data from the internet. But it does not do the same things a trained individual does to classify and name a new species. Because it is not capable of that.
The information from 4 days was not parsed on, that’s why I chose something so recent.
And LLM can be trained to do this. Literally when it looked at the Petrel it did things humans do such as take note of the dark colours common in seabirds, the small size, etc. and it used those points to reach its conclusion.
We don’t do anything special as humans, we take in data, process it, and spit out a result. It’s why a child has to be taught basic concepts such as creativity or socialising.
Given nothing at all, could the LLM quantify or develop the tools and systems we use to categorize such species? Could it discover a species? The spirit of the question is, humans have been able to look at the world around them, using data we gain from our 5 senses and the scientific method to do this. The LLM cannot develop the same information gathering or classification, diagnostic, or scientific method skills in order to do the same. It relies solely on what we provide it and can only operate within those parameters. It does not have senses of its own. That’s the point. Go look up how we have learned to quantify sapience. Because what you’re saying is that you (a small data point out of trillions or more) can’t do a thing a computer can do, so it must be able to think.
I suspect others are talking about “thinking” only objectively.
B) If a LLM had a subjective experience when given input presumably it has none when all processes are stopped (subjectively, unverifiable).
A) If a LLM has no input then there are no processes going on at all which could be described as thinking (objectively, verifiable: what is the program doing).
So is a rock conscious? I guess we’ll never know… But AI!?! Definitely conscious! smh.