Feedforward Neural Network Methodology
Jianqing Fan, Qiwei Yao “Feedforward Neural Network Methodology"
Springer | 1999-06-11 | ISBN: 0387987452 | 340 pages | PDF | 1,8 MB
This monograph provides a thorough and coherent introduction to the mathematical properties of feedforward neural networks and to the computationally intensive methodology that has enabled their highly successful application to complex problems of pattern classification, forecasting, regression, and nonlinear systems modeling. The reader is provided with the information needed to make practical use of the powerful modeling and design tool of feedforward neural networks, as well as presented with the background needed to make contributions to several research frontiers. This work is therefore of interest to those in electrical engineering, operations research, computer science, and statistics who would like to use nonlinear modeling of stochastic phenomena to treat problems of pattern classification, forecasting, signal processing, machine intelligence, and nonlinear regression. T.L. Fine is Professor of Electrical Engineering at Cornell University.
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Nonlinear Regression Feedforward Neural Networks Stochastic Phenomena Qiwei Yao Research Frontiers Nonlinear Systems Coherent Introduction Cornell University Machine Intelligence Pattern Classification Mathematical Properties Easy Share Research Computer
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