A review on neural networks with random weights

Volume: 275, Pages: 278 - 287
Published: Jan 1, 2018
Abstract
In big data fields, with increasing computing capability, artificial neural networks have shown great strength in solving data classification and regression problems. The traditional training of neural networks depends generally on the error back propagation method to iteratively tune all the parameters. When the number of hidden layers increases, this kind of training has many problems such as slow convergence, time consuming, and local minima....
Paper Details
Title
A review on neural networks with random weights
Published Date
Jan 1, 2018
Volume
275
Pages
278 - 287
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