The real questions are Q1. Exactly how do we get DL systems to learn to reason? Q2. How do use self-supervised learning to get machines to learn abstract representations of the world (call them symbols if you wish, but really patterns of activity of neural nets, aka vectors)?
-
-
Body plans are composed by repeated and hierarchical activation of developmental processes. No less compositional than sentence structure. The protein/RNA mechanisms that achieve this are all based on graded molecular dynamics, not on symbol processing.
-
what makes them not symbolic processing? pax6 for example can serve as a signal inducing a whole cascade of genes. lac operon basically serves as an if-then instruction. looks like a stochastic or probabilistic grammar/cellular automata, evolved rather than programmed.
End of conversation
New conversation -
Loading seems to be taking a while.
Twitter may be over capacity or experiencing a momentary hiccup. Try again or visit Twitter Status for more information.