It’s interesting, because people say they can only get better, but I’m not sure that’s true. What happens when most new text data is being generated by LLMs or we accidentally start labeling images created through diffusion as real. Seems like there is a potential for these models to implode.
They actually tested that, trained a model using only the outputs of the previous generation of model. It takes less iterations of that to completely lose quality than you’d think.
It’s interesting, because people say they can only get better, but I’m not sure that’s true. What happens when most new text data is being generated by LLMs or we accidentally start labeling images created through diffusion as real. Seems like there is a potential for these models to implode.
They actually tested that, trained a model using only the outputs of the previous generation of model. It takes less iterations of that to completely lose quality than you’d think.
They go insane pretty quickly don’t they? As in it all just become a jumble.
Do you have any links on that, it was something I had wanted to explore, but never had the time or money.
Given that people quite frequently try and present AI generated content as real, I’d say this will be a huge problem in the future.
Microsoft has shown with Phi-2 (https://www.microsoft.com/en-us/research/blog/phi-2-the-surprising-power-of-small-language-models/) that synthetic data generation can be a great source for training data.