Sensitivity Analysis of the Multilayer Perceptron Due to the Errors of the Inputs and Weights & Improvements in BP and ES Algorithms

Sensitivity Analysis of the Multilayer Perceptron Due to the Errors of the Inputs and Weights & Improvements in BP and ES Algorithms
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Total Pages : 230
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ISBN-13 : OCLC:707171183
ISBN-10 :
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Book Synopsis Sensitivity Analysis of the Multilayer Perceptron Due to the Errors of the Inputs and Weights & Improvements in BP and ES Algorithms by :

Download or read book Sensitivity Analysis of the Multilayer Perceptron Due to the Errors of the Inputs and Weights & Improvements in BP and ES Algorithms written by and published by . This book was released on 2007 with total page 230 pages. Available in PDF, EPUB and Kindle. Book excerpt:


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