top | item 45409019

(no title)

memming | 5 months ago

Foundation models can be seen as approximate amortized posterior inference machines where the posterior is conditioning on the pre-training data. However, the uncertainty is usually ignored, and there may be ways to improve the state of the art if we were better Bayesians.

discuss

order

No comments yet.