top | item 42073900

(no title)

yathaid | 1 year ago

Neural networks can encode any computable function.

KANs have no advantage in terms of computability. Why are they a promising pathway?

Also, the splines in KANs are no more "explainable" than the matrix weights. Sure, we can assign importance to a node, but so what? It has no more meaning than anything else.

discuss

order

No comments yet.