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Is There a Clean Map in There?
Deep learning networks are so abstracted that you fix the weights. There's very few perimeters, which is what makes them tractable in the first place. But then applying that to real, wet brains, is there going to be a clean map in there? Yes, i should say so. It's really like the same attractor, but i'm changing edge weights. Ah, i'm changing the network, but I'm really preserving this attractor in this piece of it. And understanding that is really a kind of the key to a sort of developing learning rules that allow you to store multiple attractors in a network.