Backpropagation: Theory, Architectures, and Applications

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Backpropagation: Theory, Architectures, and Applications

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Backpropagation: Theory, Architectures, and Applications - CRC Press Book

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The activation function should do two things:. The general form of an activation function is shown below:. Why do we need non-linearity? Technically, we do not need non-linearity, but there are benefits to using non-linear functions. If we do not apply an activation function, the output signal would simply be a linear function.

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