this post was submitted on 16 Jul 2023
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"Our primary conclusion across all scenarios is that without enough fresh real data in each generation of an autophagous loop, future generative models are doomed to have their quality (precision) or diversity (recall) progressively decrease," they added. "We term this condition Model Autophagy Disorder (MAD)."

Interestingly, this might be a more challenging problem as we increase the use of generative AI models online.

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[–] collegefurtrader@discuss.tchncs.de 17 points 1 year ago* (last edited 1 year ago)

If you let the AI feed on its own bullshit long enough it will eventually vote for Donald Trump

[–] subway@lemmy.fmhy.ml 16 points 1 year ago

AI incest at work. Just look at that Hapsburg jaw.

[–] frog@beehaw.org 10 points 1 year ago (1 children)

Good!

Was that petty?

But, you know, good luck completely replacing human artists, musicians, writers, programmers, and everyone else who actually creates new content, if all generative AI models essentially give themselves prion diseases when they feed on each other.

[–] feeltheglee@beehaw.org 10 points 1 year ago

You know how when you're on a voice/video call and the audio keeps bouncing between two people and gets all feedback-y and screechy?

That, but with LLMs.

But...isn't unsupervised backfeeding the same as simply overtraining the same dataset? We already know overtraining causes broken models.

Besides, the next AI models will be fed with the interactions from humans with AI, not just it's own content. ChatGPT already works like this, it learns with every interaction, every chat.

And the generative image models will be fed with AI-assisted images where humans will have fixed flaws like anatomy (the famous hands) or other glitches.

So as interesting as this is, as long as humans interact with AI the hybrid output used for training will contain enough new "input" to keep the models on track. There are already refined image generators trained with their own but human-assisted output that are better than their predecessor.

[–] Exaggeration207@beehaw.org 8 points 1 year ago

I only have a small amount of experience with generating images using AI models, but I have found this to be true. It's like making a photocopy of a photocopy. The results can be unintentionally hilarious though.

[–] Cybrpwca@beehaw.org 7 points 1 year ago

So we have generation loss instead of AI making better AI. At least for now. That's strangely comforting.

[–] majestictechie@lemmy.fosshost.com 7 points 1 year ago (1 children)

Its like making a photocopy of a photocopy.

[–] Ferris@discuss.online 4 points 1 year ago

needs more .jpg

[–] Melody@lemmy.one 6 points 1 year ago

Muahahahahahahaha.

Looks like we found a relatively easy way to "poison" an AI dataset silently. Just feed it AI output.

I could see this mechanic being exploited by websites to provide a bottomless amount of junk text that only a bot doing content scraping would see.

[–] Amax@lemmy.ca 6 points 1 year ago

MadAI’s disease.

I guess we didn’t learn when we did it with cows.

[–] ZickZack@kbin.social 5 points 1 year ago (1 children)

That paper makes a bunch of(implicit) assumptions that make it pretty unrealistic: basically they assume that once we have decently working models already, we would still continue to do normal "brain-off" web scraping.
In practice you can use even relatively simple models to start filtering and creating more training data:
Think about it like the original LLM being a huge trashcan in which you try to compress Terrabytes of mostly garbage web data.
Then, you use fine-tuning (like the instruction tuning used the assistant models) to increases the likelihood of deriving non-trash from the model (or to accurately classify trash vs non-trash).
In general this will produce a datasets that is of significantly higher quality simply because you got rid of all the low-quality stuff.

This is not even a theoretical construction: Phi-1 (https://arxiv.org/abs/2306.11644) does exactly that to train a state-of-the-art language model on a tiny amount of high quality data (the model is also tiny: only half a percent the size of gpt-3).
Previously tiny stories https://arxiv.org/abs/2305.07759 showed something similar: you can build high quality models with very little data, if you have good data (in the case of tiny stories they generate simply stories to train small language models).

In general LLM people seem to re-discover that good data is actually good and you don't really need these "shotgun approach" web scrape datasets.

[–] wahming@kbin.social 5 points 1 year ago (1 children)

Given the prevalence of bots and attempts to pass off fake data as real though, is there still any way to reliably differentiate good data from bad?

[–] ZickZack@kbin.social 1 points 1 year ago (1 children)

Yes: keep in mind that with "good" nobody is talking about the content of the data, but rather how statistically interesting it is for the model.

Really what machine learning is doing is trying to deduce a probability distribution q from a sampled distribution x ~ p(x).
The problem with statistical learning is that we only ever see an infinitesimally small amount of the true distribution (we only have finite samples from an infinite sample space of images/language/etc....).

So now what we really need to do is pick samples that adequately cover the entire distribution, without being redundant, since redundancy produces both more work (you simply have more things to fit against), and can obscure the true distribution:
Let's say that we have a uniform probability distribution over [1,2,3] (uniform means everything has the same probability of 1/3).

If we faithfully sample from this we can learn a distribution that will also return [1,2,3] with equal probability.
But let's say we have some redundancy in there (either direct duplicates, or, in the case of language, close-to duplicates):
The empirical distribution may look like {1,1,1,2,2,3} which seems to make ones a lot more likely than they are.
One way to deal with this is to just sample a lot more points: if we sample 6000 points, we are naturally going to get closer to the true distribution (similar how flipping a coin twice can give you 100% tails probability, even if the coin is actually fair. Once you flip it more often, it will return to the true probability).

Another way is to correct our observations towards what we already know to be true in our distribution (e.g. a direct 1:1 duplicate in language is presumably a copy-paste rather than a true increase in probability for a subsequence).

<continued in next comment>

[–] ZickZack@kbin.social 1 points 1 year ago* (last edited 1 year ago)

The "adequate covering" of our distribution p is also pretty self-explanatory: We don't need to see the statement "elephants are big" a thousand times to learn it, but we do need to see it at least once:

Think of the p distribution as e.g. defining a function on the real numbers. We want to learn that function using a finite amount of samples. It now makes sense to place our samples at interesting points (e.g. where the function changes direction), rather than just randomly throwing billions of points against the problem.

That means that even if our estimator is bad (i.e. it can barely distinguish real and fake data), it is still better than just randomly sampling (e.g. you can say "let's generate 100 samples of law, 100 samples of math, 100 samples of XYZ,..." rather than just having a big mush where you hope that everything appears).
That makes a few assumptions: the estimator is better than 0% accurate, the estimator has no statistical bias (e.g. the estimator didn't learn things like "add all sentences that start with an A", since that would shift our distribution), and some other things that are too intricate to explain here.

Importantly: even if your estimator is bad, it is better than not having it. You can also manually tune it towards being a little bit biased, either to reduce variance (e.g. let's filter out all HTML code), or to reduce the impact of certain real-world effects (like that most stuff on the internet is english: you may want to balance that down to get a more multilingual model).

However, you have not note here that these are LANGUAGE MODELS. They are not everything models.
These models don't aim for factual accuracy, nor do they have any way of verifying it: That's simply not the purview of these systems.
People use them as everything models, because empirically there's a lot more true stuff than nonsense in those scrapes and language models have to know something about the world to e.g. solve ambiguity, but these are side-effects of the model's training as a language model.
If you have a model that produces completely realistic (but semantically wrong) language, that's still good data for a language model.
"Good data" for a language model does not have to be "true data", since these models don't care about truth: that's not their objective!
They just complete sentences by predicting the next token, which is independent of factuallity.
There are people working on making these models more factual (same idea: you bias your estimator towards more likely to be true things, like boosting reliable sources such as wikipedia, rather than training on uniformly weighted webscrapes), but to do that you need a lot more overview over your data, for which you need more efficient models, for which you need better distributions, for which you need better estimators (though in that case they would be "factuallity estimators").
In general though the same "better than nothing" sentiment applies: if you have a sampling strategy that is not completely wrong, you can still beat completely random sample models. If your estimator is good, you can substantially beat them (and LLMs are pretty good in almost everything, which means you will get pretty good samples if you just sample according to the probability that the LLM tells you "this data is good")

For actually making sure that the stuff these models produce is true, you need very different systems that actually model facts, rather than just modelling language. Another way is to remove the bottleneck of machine learning models with respect to accuracy (i.e. you build a model that may be bad, but can never give you a wrong answer):
One example would be vector-search engines that, like search engines, retrieve information from a corpus based on the similarity as predicted by a machine learning model. Since you retrieve from a fixed corpus (like wikipedia) the model will never give you wrong information (assuming the corpus is not wrong)! A bad model may just not find the correct e.g. wikipedia entry to present to you.

[–] coolin@beehaw.org 4 points 1 year ago (1 children)

For the love of God please stop posting the same story about AI model collapse. This paper has been out since May, been discussed multiple times, and the scenario it presents is highly unrealistic.

Training on the whole internet is known to produce shit model output, requiring humans to produce their own high quality datasets to feed to these models to yield high quality results. That is why we have techniques like fine-tuning, LoRAs and RLHF as well as countless datasets to feed to models.

Yes, if a model for some reason was trained on the internet for several iterations, it would collapse and produce garbage. But the current frontier approach for datasets is for LLMs (e.g. GPT4) to produce high quality datasets and for new LLMs to train on that. This has been shown to work with Phi-1 (really good at writing Python code, trained on high quality textbook level content and GPT3.5) and Orca/OpenOrca (GPT-3.5 level model trained on millions of examples from GPT4 and GPT-3.5). Additionally, GPT4 has itself likely been trained on synthetic data and future iterations will train on more and more.

Notably, by selecting a narrow range of outputs, instead of the whole range, we are able to avoid model collapse and in fact produce even better outputs.

[–] shanghaibebop@beehaw.org 1 points 1 year ago

We're all just learning here, but yeah, that's pretty interesting to learn about effective synthetic data used for training.

[–] shnizmuffin@lemmy.inbutts.lol 2 points 1 year ago (1 children)
[–] offendicula@fedia.io 1 points 1 year ago

hey! i'm so old i saw that in the movie theater!

[–] SingularEye@lemmy.blahaj.zone 2 points 1 year ago

It's like when the cows are fed chicken shit, and the chickens are fed cow bones.

[–] h3ndrik@feddit.de 0 points 1 year ago* (last edited 1 year ago) (1 children)

Wow. How is this going to affect all the projects that fine-tune Meta's Llama model with synthetic training data?

[–] lloram239@feddit.de 1 points 1 year ago (1 children)

Not much at all I would think. The Llama models get trained on the superior GPT-4 output, not on their own output. In general I think it's a bit of an artificial problem, nobody really expects to train AI on their own output and get good results. What actually happens is AI being used to curate real world data and use that curated data as input, which gives much better results than feeding the raw data directly into the AI (as can be seen by early LLMs that just go completely off track and start repeating comment section and HTML code, that has nothing to do with your prompt, but that just happens to be part of raw websites).

[–] h3ndrik@feddit.de 1 points 1 year ago

Thank you for explaining. Yes. Now that i have skimmed through the paper i'm kind of disappointed in their work. It's not a surprise to me that quality will degrade if you design a feedback loop with low quality data. And does this even mean anything for a distinction between human and synthetic data? Isn't it obvious a model will deteriorate if you feed it progressively lower quality input, regardless of where you got that from? I'm pretty sure this is the mechanism behind that. A better question to ask would be: Is there some point where synthetic output gets good enough to train something with it. And how far away is that point. Or can we rule that out because of some properties we can't get around. I'm not sure if learning from own output is even possible like this. I as a human certainly can't teach myself. I would need some input like books or curated assignments/examples prepared by other people. There are kind of intrinsic barriers when teaching oneself. However I can certainly practice stuff. But that's kind of a different mechanism. And difficult to compare to the AI stuff.

I'm glad i can continue to play with the language models, have them tuned to follow instructions (with the help of GPT4 data) etc

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