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Comment by cold_harbor

7 hours ago

what's wild is they accidentally solved it — pretraining IS unsupervised learning at scale, RLHF IS reinforcement learning. they just didnt know the recipe yet

pretraining isn't unsupervised, it is self-supervised - meaning it is moderately more scale limited.

  • What would unsupervised mean, would unsupervised be something like alphago playing against itself trillions of times?

    Whereas self-supervised, allows learning without explicit annotation of data ; but it doesn't matter if the models already trained on the entire Internet, and it's not like a game where it can come up with effectively new training data for itself?

    • Unsupervised is basically clustering. Alphago is RL - winning or losing a game is a form of supervision.

      Unsupervised is something where there is no intrinsic reward signal. In pre training, predicting the next token and seeing that it matches is a reward signal, hence it is self supervised.

  • fair point — OpenAI's original plan literally said "solve unsupervised learning". the self-supervised distinction wasnt really standard til after BERT/GPT popularized it

    • I think it's an extremely important distinction because self supervised learning has real inherent reward signals. Something like clustering does not.