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Generating Random Parameters in Feedforward Neural Networks with Random
Hidden Nodes: Drawbacks of the Standard Method and How to Improve It
International Conference on Neural Information Processing (ICONIP), 2019
Abstract
The standard method of generating random weights and biases in feedforward neural networks with random hidden nodes, selects them both from the uniform distribution over the same fixed interval. In this work, we show the drawbacks of this approach and propose a new method of generating random parameters. This method ensures the most nonlinear fragments of sigmoids, which are most useful in modeling target function nonlinearity, are kept in the input hypercube. In addition, we show how to generate activation functions with uniformly distributed slope angles.
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