Multilayer Feedforward Networks with a Non-Polynomial Activation Function Can Approximate Any Function
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Allan Pinkus | Shimon Schocken | Moshe Leshno | Vladimir Ya. Lin | A. Pinkus | M. Leshno | V. Lin | S. Schocken
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