Many computational properties are maximized when the dynamics of a network are at a 'critical point," a state where systems can quickly change their overall characteristics in fundamental ways, transitioning e.g. between order and chaos or stability and instability. Therefore, the critical state is widely assumed to be optimal for any computation in recurrent neural networks, which are used in many AI applications.
from News on Artificial Intelligence and Machine Learning https://ift.tt/32G584t
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Optimizing neural networks on a brain-inspired computer
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