Adaptive classification of temporal signals in fixed-weights recurrent neural networks: an existence proof
classification
🧮 math.OC
math.DS
keywords
neuralnoiseproofrecurrentsignalsadaptiveadaptivelyadditive
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We address the important theoretical question why a recurrent neural network with fixed weights can adaptively classify time-varied signals in the presence of additive noise and parametric perturbations. We provide a mathematical proof assuming that unknown parameters are allowed to enter the signal nonlinearly and the noise amplitude is sufficiently small.
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