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Georg Schnitger
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Publisher: Journals Gateway
Neural Computation (1996) 8 (4): 805–818.
Published: 01 May 1996
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We show that neural networks with three-times continuously differentiable activation functions are capable of computing a certain family of n -bit Boolean functions with two gates, whereas networks composed of binary threshold functions require at least Ω(log n ) gates. Thus, for a large class of activation functions, analog neural networks can be more powerful than discrete neural networks, even when computing Boolean functions.