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Episode 32: Jamie Simon, UC Berkeley: On theoretical principles for how neural networks learn and generalize

Generally Intelligent

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Connectivity Matters From a Machine Learning Perspective

It's Extremely easy to find paths that connect any two points that are mapped to the same class via neural network. You're co-opting proglacial theory. If you could make this mapping to Percolation theory it might allow the transfer of other tools and concepts from theoretical physics. The bridge between statistical mechanics and Learning is very strong but mostly in like there are many paths that are very well-trodden if this works robustly.

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