Sign in

What shapes the loss landscape of self-supervised learning?

By Liu Ziyin and others
Prevention of complete and dimensional collapse of representations has recently become a design principle for self-supervised learning (SSL). However, questions remain in our theoretical understanding: When do those collapses occur? What are the mechanisms and causes? We answer these questions by deriving and thoroughly analyzing an analytically tractable theory of... Show more
March 12, 2023
=
0
Loading PDF…
Loading full text...
Similar articles
Loading recommendations...
=
0
x1
What shapes the loss landscape of self-supervised learning?
Click on play to start listening