|
|
|
|
|
by hodgehog11
6 days ago
|
|
Obviously it's great that those who are only aware of JEPA should be educated about CCA. If you don't know CCA, you should not be working in unsupervised learning. However, it's pretty obvious that they are related since CCA is (or should be) well-known to be among the original unsupervised learning algorithms. It's the progenitor of the field. It works, it always did. Just like logistic regression for classification. Deep learning is about putting in huge computational effort for the extra few percent. This is like saying that Gauss deserves the credit for LLMs because he came up with least-squares regression, which was the progenitor of supervised learning. Yes, there is a chain of discoveries leading back, but when you give the credit that far back, it's just insulting to the hard work that came inbetween. Gauss and Hotelling are famous enough as it is. (Before anyone asks, I'm not shilling for JEPA, I just think this argument is reductive for all of unsupervised and semi-supervised learning.) |
|
man, it's great i didnt know about this rule earlier or there is a lot of stuff i wouldn't have learned in the meantime. but now that i do maybe i can go read about this and kick around some of the more stubborn collapse cases im hitting, my dang jepas keep figuring out how to cheat.
edit: oh this looks like its just whiten and rotate and its saying the jepa stuff is the nonlinear bit